Internet Engineering Task Force (IETF)                   E. Birrane, III
Request for Comments: 9675                                     S. Heiner
Category: Informational                                         E. Annis
ISSN: 2070-1721                 Johns Hopkins Applied Physics Laboratory
                                                            October                                                  JHU/APL
                                                           November 2024

       Delay-Tolerant Networking Management Architecture (DTNMA)

Abstract

   The Delay-Tolerant Networking (DTN) architecture describes a type of
   challenged network in which communications may be significantly
   affected by long signal propagation delays, frequent link
   disruptions, or both.  The unique characteristics of this environment
   require a unique approach to network management that supports
   asynchronous transport, autonomous local control, and a small
   footprint (in both resources and dependencies) so as to deploy on
   constrained devices.

   This document describes a DTN Management Architecture (DTNMA)
   suitable for managing devices in any challenged environment but, in
   particular, those communicating using the DTN Bundle Protocol (BP).
   Operating over BP requires an architecture that neither presumes
   synchronized transport behavior nor relies on query-response
   mechanisms.  Implementations compliant with this DTNMA should expect
   to successfully operate in extremely challenging conditions, such as
   over unidirectional links and other places where BP is the preferred
   transport.

Status of This Memo

   This document is not an Internet Standards Track specification; it is
   published for informational purposes.

   This document is a product of the Internet Engineering Task Force
   (IETF).  It represents the consensus of the IETF community.  It has
   received public review and has been approved for publication by the
   Internet Engineering Steering Group (IESG).  Not all documents
   approved by the IESG are candidates for any level of Internet
   Standard; see Section 2 of RFC 7841.

   Information about the current status of this document, any errata,
   and how to provide feedback on it may be obtained at
   https://www.rfc-editor.org/info/rfc9675.

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   in the Revised BSD License.

Table of Contents

   1.  Introduction
     1.1.  Purpose
     1.2.  Scope
     1.3.  Organization
   2.  Terminology
   3.  Challenged Network Overview
     3.1.  Challenged Network Constraints
     3.2.  Topology and Service Implications
       3.2.1.  Tiered Management
       3.2.2.  Remote and Local Manager Associations
     3.3.  Management Special Cases
   4.  Desirable Design Properties
     4.1.  Dynamic Architectures
     4.2.  Hierarchically Modeled Information
     4.3.  Adaptive Push of Information
     4.4.  Efficient Data Encoding
     4.5.  Universal, Unique Data Identification
     4.6.  Runtime Data Definitions
     4.7.  Autonomous Operation
   5.  Current Remote Management Approaches
     5.1.  SNMP and SMI Models
       5.1.1.  The SMI Modeling Language
       5.1.2.  SNMP and Transport
     5.2.  XML-Infoset-Based Protocols and YANG Data Models
       5.2.1.  The YANG Modeling Language
       5.2.2.  NETCONF Protocol and Transport
       5.2.3.  RESTCONF Protocol and Transport
       5.2.4.  CORECONF Protocol and Transport
     5.3.  gRPC Network Management Interface (gNMI)
       5.3.1.  The Protobuf Modeling Language
       5.3.2.  gRPC Protocol and Transport
     5.4.  Intelligent Platform Management Interface (IPMI)
     5.5.  Autonomic Networking
     5.6.  Deep Space Autonomy
   6.  Motivation for New Features
   7.  Reference Model
     7.1.  Important Concepts
     7.2.  Model Overview
     7.3.  Functional Elements
       7.3.1.  Managed Applications and Services
       7.3.2.  DTNMA Agent (DA)
       7.3.3.  Managing Applications and Services
       7.3.4.  DTNMA Manager (DM)
       7.3.5.  Pre-Shared Definitions
   8.  Desired Services
     8.1.  Local Monitoring and Control
     8.2.  Local Data Fusion
     8.3.  Remote Configuration
     8.4.  Remote Reporting
     8.5.  Authorization
   9.  Logical Autonomy Model
     9.1.  Overview
     9.2.  Model Characteristics
     9.3.  Data Value Representation
     9.4.  Data Reporting
     9.5.  Command Execution
     9.6.  Predicate Autonomy Rules
   10. Use Cases
     10.1.  Notation
     10.2.  Serialized Management
     10.3.  Intermittent Connectivity
     10.4.  Open-Loop Reporting
     10.5.  Multiple Administrative Domains
     10.6.  Cascading Management
   11. IANA Considerations
   12. Security Considerations
   13. Informative References
   Acknowledgements
   Authors' Addresses

1.  Introduction

   This document describes a logical, informational Delay-Tolerant
   Networking Management Architecture (DTNMA) suitable for operating
   devices in a challenged architecture, such as those communicating
   using the DTN Bundle Protocol version 7 (BPv7) [RFC9171].

   Challenged networks have certain properties that differentiate them
   from other kinds of networks.  These properties, outlined in
   Section 2.2.1 of [RFC7228], include lacking end-to-end IP
   connectivity, having "serious interruptions" to end-to-end
   connectivity, and exhibiting delays longer than can be tolerated by
   end-to-end synchronization mechanisms (such as TCP).

   These challenged network properties can be caused by a variety of
   factors such as physical constraints (e.g., long signal propagation
   delays and frequent link disruptions), administrative policies (e.g.,
   quality-of-service prioritization, service-level agreements, and
   traffic management and scheduling), and off-nominal behaviors (e.g.,
   active attackers and misconfigurations).  Since these challenges are
   not solely caused by sparseness, instances of challenged networks
   will persist even in increasingly connected environments.

   The DTN architecture, described in [RFC4838], has been designed for
   data exchange in challenged networks.  Just as the DTN architecture
   requires new capabilities for transport and transport security,
   special consideration is needed for the operation of devices in a
   challenged network.

1.1.  Purpose

   This document describes how challenged network properties affect the
   operation of devices in such networks.  This description is presented
   as a logical architecture formed from a union of best practices for
   operating devices deployed in challenged environments.

   One important practice captured in this document is the concept of
   self-operation.  Self-operation involves operating a device without
   human interactivity, without system-in-the-loop synchronous
   functions, and without a synchronous underlying transport layer.
   This means that devices determine their own schedules for data
   reporting, determine their own operational configuration, and perform
   their own error discovery and mitigation.

1.2.  Scope

   This document includes the information necessary to document existing
   practices for operating devices in a challenged network in the
   context of a logical architecture.  A logical architecture describes
   the logical operation of a system by identifying components of the
   system (such as in a reference model), the behaviors they enable, and
   use cases describing how those behaviors result in the desired
   operation of the system.

   Logical architectures are not functional architectures.  Therefore,
   any functional design for achieving desired behaviors is out of scope
   for this document.  The set of architectural principles presented
   here is not meant to completely specify interfaces between
   components.

   The selection of any particular transport or network layer is outside
   of the scope of this document.  The DTNMA does not require the use of
   any specific protocol such as IP, BP, TCP, or UDP.  In particular,
   the DTNMA design does not presume the use of BPv7, IPv4, or IPv6.

      |  NOTE: As BPv7 is the preferred transport for networks
      |  conforming to the DTN architecture, the DTNMA should be
      |  considered for any BPv7 network deployment.  However, the DTNMA
      |  may also be used in other networks that have similar needs for
      |  this particular style of self-operation.  For this reason, the
      |  DTNMA does not require the use of BPv7 to transport management
      |  information.

   Network features such as naming, addressing, routing, and
   communications security are out of scope for the DTNMA.  It is
   presumed that any operational network communicating DTNMA messages
   would implement these services for any payloads carried by that
   network.

   The interactions between and amongst the DTNMA and other management
   approaches are outside of the scope of this document.

1.3.  Organization

   The following nine sections provide details regarding the DTNMA.

   Terminology:  Section 2 identifies terms fundamental to understanding
      DTNMA concepts.  Whenever possible, these terms align in both word
      selection and meaning with their use in other management
      protocols.

   Challenged Network Overview:  Section 3 describes important aspects
      of challenged networks and necessary approaches for their
      management.

   Desirable Design Properties:  Section 4 defines those properties of
      the DTNMA needed to operate within the constraints of a challenged
      network.  These properties are similar to the specification of
      system-level requirements of a DTN management solution.

   Current Remote Management Approaches:  Section 5 provides a brief
      overview of existing remote management approaches.  Where
      possible, the DTNMA adopts concepts from these approaches.

   Motivation for New Features:  Section 6 provides an overall
      motivation for this work.  It also explains why a management
      architecture for challenged networks is useful and necessary.

   Reference Model:  Section 7 defines a reference model that can be
      used to reason about analyze the DTNMA independent independently of an implementation or
      implementation architecture.  This model identifies the logical
      components of the system and the high-level relationships and
      behaviors amongst those components.

   Desired Services:  Section 8 identifies and defines the DTNMA
      services provided to network and mission operators.

   Logical Autonomy Model:  Section 9 provides an exemplar example data model
      that can be used to reason about analyze DTNMA control and data flows.  This
      model is based on the DTNMA reference model.

   Use Cases:  Section 10 presents multiple use cases accommodated by
      the DTNMA.  Each use case is presented as a set of control and
      data flows referencing the DTNMA reference model and logical
      autonomy model.

2.  Terminology

   This section defines terminology that is either unique to the DTNMA
   or necessary for understanding the concepts defined in this
   specification.

   Timely Data Exchange:  The ability to communicate information between
      two (or more) entities within a required period of time.  In some
      cases, a 1-second exchange may not be timely; in other cases, a
      1-hour exchange may be timely.

   Local Operation:  The operation of a device by an application co-
      resident on that device.  Local operators are applications running
      on a device, and there might be one or more of these applications
      working independently or as one to perform the local operations
      function.  Absent error conditions, local operators are always
      expected to be available to the devices they manage.

   Remote Operation:  The operation of a device by an application
      running on a separate device.  Remote operators communicate with
      operated devices over a network.  Remote operators are not always
      expected to be available to the devices they operate.

   DTN Management:  The management, monitoring, and control of a device
      that does not depend on stateful connections, timely data exchange
      of management messages, or system-in-the-loop synchronous
      functions.  DTN management is accomplished as a fusion of local
      operation and remote operation techniques; remote operators manage
      the configuration of local operators who provide monitoring and
      control of their co-resident devices.

   DTNMA Agent (DA):  A role associated with a managed device
      responsible for reporting performance data, accepting policy
      directives, performing autonomous local control, error handling,
      and data validation.  DAs exchange information with DTNMA Managers
      (DMs) operating on the same device and/or on remote devices in the
      network.  A DA is a type of local operator.

   DTNMA Manager (DM):  A role associated with a managing device
      responsible for configuring the behavior of, and eventually
      receiving information from, DAs.  DMs interact with one or more
      DAs located on the same device and/or on remote devices in the
      network.  A DM is a type of remote operator.

   Controls:  Procedures run by a DA to change the behavior,
      configuration, or state of an application or protocol managed by
      that DA.  These include procedures to manage the DA itself, such
      as having the DA produce performance reports or applying new
      management policies.

   Externally Defined Data (EDD):  Typed information made available to a
      DA by its hosting device but not computed directly by the DA
      itself.

   Data Reports:  Typed, Report:  A typed, ordered collections collection of data values gathered by
      one or more DAs and provided to one or more DMs.  Reports comply
      with the format of a given data report schema.

   Data Report Schemas:  Named, Schema:  A named, ordered collections collection of data elements
      that represent the schema of a data report.

   Rule:  Unit of autonomous specification that provides a stimulus-
      response relationship between time or state on a DA and the
      actions or operations to be run as a result of that time or state.

3.  Challenged Network Overview

   The DTNMA provides network management services able to operate in a
   challenged network environment, such as envisioned by environments for which the DTN
   architecture. architecture was
   created.  This section describes what is meant by the term
   "challenged network", the important properties of such a network, and
   observations on impacts to management approaches.

3.1.  Challenged Network Constraints

   Constrained networks are defined as networks where "some of the
   characteristics pretty much taken for granted with link layers in
   common use in the Internet at the time of writing are not attainable"
   [RFC7228].  This broad definition captures a variety of potential
   issues relating to physical, technical, and regulatory constraints on
   message transmission.  Constrained networks typically include nodes
   that regularly reboot or are otherwise turned off for long periods of
   time, transmit at low or asynchronous bitrates, and/or have very
   limited computational resources.

   Separately, a challenged network is defined as one that "has serious
   trouble maintaining what an application would today expect of the
   end-to-end IP model" [RFC7228].  Links in such networks may be
   impacted by attenuation, propagation delays, mobility, occultation,
   and other limitations imposed by energy and mass considerations.
   Therefore, systems relying on such links cannot guarantee timely end-
   to-end data exchange.

      |  NOTE: Because challenged networks might not provide services
      |  expected of the end-to-end IP model, devices in such networks
      |  might not implement networking stacks associated with the end-
      |  to-end IP model.  This means that devices might not include
      |  support for certain transport protocols (TCP/QUIC/UDP), web
      |  protocols (HTTP), or internetworking protocols (IPv4/IPv6).

   By these definitions, a "challenged" network is a special type of
   "constrained" network, where constraints prevent timely end-to-end
   data exchange.  As such, "All challenged networks are constrained
   networks ... but not all constrained networks are challenged networks
   ... Delay-Tolerant Networking (DTN) has been designed to cope with
   challenged networks" [RFC7228].

   Solutions that work in constrained networks might not be solutions
   that work in challenged networks.  In particular, challenged networks
   exhibit the following properties that impact the way in which the
   function of network management is considered.

   *  Timely end-to-end data exchange cannot be guaranteed to exist at
      any given time between any two nodes.

   *  Latencies on the order of seconds, hours, or days must be
      tolerated.

   *  Managed devices cannot be guaranteed to always be powered so as to
      receive ad hoc management requests (even requests with
      artificially extended timeout values).

   *  Individual links may be unidirectional.

   *  Bidirectional links may have asymmetric data rates.

   *  The existence of external infrastructure, services, systems, or
      processes such as a Domain Name Service System (DNS) or a Certificate
      Authority (CA) cannot be guaranteed.

3.2.  Topology and Service Implications

   The set of constraints that might be present in a challenged network
   impacts both the topology of the network and the services active
   within that network.

   Operational networks handle cases where nodes join and leave the
   network over time.  These topology changes may or may not be planned,
   they may or may not represent errors, and they may or may not impact
   network services.  Challenged networks differ from other networks not
   in the presence of topological change but in the likelihood that
   impacts to topology result in impacts to network services.

   The difference between topology impacts and service impacts can be
   expressed in terms of connectivity.  Topological connectivity usually
   refers to the existence of a path between an application message
   source and destination.  Service connectivity, alternatively, refers
   to the existence of a path between a node and one or more services
   needed to process (often just-in-time) -- often just in time -- application messaging.
   Examples of service connectivity include access to infrastructure
   services such as a Domain Name System (DNS) or a CA.

   In networks that might be partitioned most of the time, it is less
   likely that a node would concurrently access both an application
   endpoint and one or more network service endpoints.  For this reason,
   network services in a challenged network should be designed to allow
   for asynchronous operation.  Accommodating this use case often
   involves the use of local caching, pre-placing information, and not
   hard-coding message information at a source that might change when a
   message reaches its destination.

      |  NOTE: One example of rethinking services in a challenged
      |  network is the securing of BPv7 bundles.  The Bundle Protocol
      |  Security (BPSec) [RFC9172] security extensions to BPv7 do not
      |  encode security destinations when applying security.  Instead,
      |  BPSec requires nodes in a network to identify themselves as
      |  security verifiers or acceptors when receiving and processing
      |  secured messages.

3.2.1.  Tiered Management

   Network operations and management approaches need to adapt to the
   topology and service impacts encountered in challenged networks.  In
   particular, the roles and responsibilities of "managers" and "agents"
   need to be different than what would be expected of unchallenged
   networks.

   When connectivity to a manager cannot be guaranteed, agents will need
   to rely on locally available information and local autonomy to react
   to changes at the node.  When an agent uses local autonomy for self-
   operation, it acts as a local operator serving as a proxy for an
   absent remote operator.

   Therefore, the role of a "manager" must become one of a remote
   operator generating configurations and other essential updates for
   the local operator "agents" that are co-resident on a managed device.

   This approach creates a two-tiered management architecture.  The
   first tier is the management of the local operator configuration
   using any one of a variety of standard mechanisms, models, and
   protocols.  The second tier is the operation of the local device
   through the local operator.

   The DTNMA defines the DTNMA Manager (DM) as a remote operator
   application and the DTNMA Agent (DA) as an agent acting as a local
   operator application.  In this model, which is illustrated in
   Figure 1, the DM and DA can be viewed as applications, with the DM
   producing new configurations and the DA receiving those
   configurations from an underlying management mechanism.

          _
         /
        / +------------+           +-----------+    Local    +---------+
  TIER /  | DM (Remote |           | DA (Local |  Operation  | Managed |
   2   \  |  Operator) |           | Operator) | <---------> |   Apps  |
  MGMT  \ +------------+           +-----------+             +---------+
         \_      ^                        ^
                 | configs                | configs
          _      |                        |
         /       V                        V
        / +------------+    Remote    +------------+
  TIER /  | Management |  Management  | Management |
   1   \  |   Client   | <----------> |   Server   |
  MGMT  \ +------------+              +------------+
         \_

               Figure 1: Two-Tiered Management Architecture

   In this approach, the configurations produced by the DM are based on
   the DA features and associated data model.  How those configurations
   are transported between the DM and the DA, and how results are
   communicated back from the DA to the DM, can be accomplished using
   whatever mechanism is most appropriate for the network and the device
   platforms -- for example, the use of a Network Configuration Protocol
   (NETCONF), RESTCONF, or Simple Network Management Protocol (SNMP)
   server on the managed device to provide configurations to a DA.

3.2.2.  Remote and Local Manager Associations

   In addition to disconnectivity, topological change can alter the
   associations amongst managed and managing devices.  Different
   managing devices might be active in a network at different times or
   in different partitions.  Managed devices might communicate with
   some, all, or none of these managing devices as a function of their
   own local configuration and policy.

      |  NOTE: These concepts relate to practices in conventional
      |  networks.  For example, supporting multiple managing devices is
      |  similar to deploying multiple instances of a network service
      |  such as a DNS server or CA node.  Selecting from a set of
      |  managing devices is similar to a sensor node's practice of
      |  electing cluster heads to act as privileged nodes for data
      |  storage and exfiltration.

   Therefore, a network management architecture for challenged networks
   should:

   1.  Support a many-to-many association amongst managing and managed
       devices, and

   2.  Allow "control from" and "reporting to" managing devices to
       function independently of one another.

3.3.  Management Special Cases

   The following special cases illustrate some of the operational
   situations that can be encountered in the management of devices in a
   challenged network.

   One-Way Management:  A managed device can only be accessed via a
      unidirectional link or via a link whose duration is shorter than a
      single round-trip propagation time.  Results of this management
      may come back at a different time, over a different path, and/or
      as observable from out-of-band changes to device behavior.

   Summary Data:  A managing device might only receive summary data
      regarding a managed device's state because a link or path is
      constrained by capacity or reliability.

   Bulk Historical Reporting:  A managing device receives a large volume
      of historical report data for a managed device.  This can occur
      when a managed device rejoins a network or has temporary access to
      a high-capacity link (or path) to between itself and the managed managing
      device.

   Multiple Managers:  A managed device tracks multiple managers in the
      network and communicates with them as a function of time, local
      state, or network topology.  This includes scenario would also apply to
      challenged networks that interconnect two or more unchallenged
      networks such that managed and managing devices exist in different
      networks.

   These special cases highlight the need for managed devices to operate
   without presupposing a dedicated connection to a single managing
   device.  Managing devices in a challenged network might never expect
   a reply to a command, and communications from managed devices may be
   delivered much later than the events being reported.

4.  Desirable Design Properties

   This section describes those design properties that are desirable
   when defining a management architecture operating across challenged
   links in a network.  These properties ensure that network management
   capabilities are retained even as delays and disruptions in the
   network scale.  Ultimately, these properties are the driving design
   principles for the DTNMA.

      |  NOTE: These properties may influence the design, construction,
      |  and adaptation of existing management tools for use in
      |  challenged networks.  For example, the properties of the DTN
      |  architecture [RFC4838] resulted in the development of BPv7
      |  [RFC9171] and BPSec [RFC9172].  The  Implementing the DTNMA model
      |  may result in the
      | construction of new management data models,
      |  policy expressions,
      | and/or protocols.

4.1.  Dynamic Architectures

   The DTNMA should be agnostic to the underlying physical topology,
   transport protocols, security solutions, and supporting
   infrastructure of a given network.  Due to the likelihood of
   operating in a frequently partitioned environment, the topology of a
   network may change over time.  Attempts to stabilize an architecture
   around individual nodes can result in a brittle management framework
   and the creation of congestion points during periods of connectivity.

   The DTNMA should not prescribe any association between a DM and a DA
   other than those defined in this document.  There should be no
   logical limitation on the number of DMs that can control a DA, the
   number of DMs that a DA should report to, or any requirement that a
   DM and DA relationship imply a pair.

      |  NOTE: Practical limitations on the relationships between and
      |  amongst DMs and DAs will exist as a function of the
      |  capabilities of networked devices.  These limitations derive
      |  from processing and storage constraints, performance
      |  requirements, and other engineering factors.  While this
      |  information is vital to the proper engineering  Implementors of a
      |  managed and
      | managing device, they are implementation considerations and not devices must account for these limitations
      |  otherwise design constraints on the DTNMA.  in their device designs.

4.2.  Hierarchically Modeled Information

   The DTNMA should use data models to define the syntactic and semantic
   contracts for data exchange between a DA and a DM.  A given model
   should have the ability to "inherit" the contents of other models to
   form hierarchical data relationships.

      |  NOTE: The term "data model" in this context refers to a schema
      |  that defines a contract between a DA and a DM regarding how
      |  information is represented and validated.

   Many network management solutions use data models to specify the
   semantic and syntactic representation of data exchanged between
   managed and managing devices.  The DTNMA is not different in this
   regard; information exchanged between DAs and DMs should conform to
   one or more predefined, normative data models.

   A common best practice when defining a data model is to make it
   cohesive.  A cohesive model is one that includes information related
   to a single purpose such as managing a single application or
   protocol.  When applying this practice, it is not uncommon to develop
   a large number of small data models that, together, describe the
   information needed to manage a device.

   Another best practice for data model development is the use of
   inclusion mechanisms to allow one data model to include information
   from another data model.  This ability to include a data model avoids
   repeating information in different data models.  When one data model
   includes information from another data model, there is an implied
   model hierarchy.

   Data models in the DTNMA should allow for the construction of both
   cohesive models and hierarchically related models.  These data models
   should be used to define all sources of information that can be
   retrieved, configured, or executed in the DTNMA.  This includes  These actions would
   include supporting DA autonomy functions such as parameterization,
   filtering, and event-driven behaviors.  These models will be used to
   both implement interoperable autonomy engines on DAs and define
   interoperable report parsing mechanisms on DMs.

      |  NOTE: While data model hierarchies can result in a more concise
      |  data model, arbitrarily complex nesting schemes can also result
      |  in very verbose encodings.  Where possible, data identification
      |  schemes should be constructed that allow for both hierarchical
      |  data and highly compressible data identification.

4.3.  Adaptive Push of Information

   DAs in the DTNMA should determine when to push information to DMs as
   a function of their local state.

   "Pull" management mechanisms require a managing device to send a
   query to a managed device and then wait for a response to that
   specific query.  This practice implies some knowledge synchronization
   between entities (which may be as simple as knowing when a managed
   device might be powered).  However, challenged networks cannot
   guarantee timely round-trip data exchange.  For this reason, pull
   mechanisms should be avoided in the DTNMA.

   "Push" mechanisms, in this context, indicate the ability of DAs to
   leverage local autonomy to determine when and what information should
   be sent to which DMs.  The push is considered adaptive because a DA
   determines what information to push (and when) as an adaptation to
   changes to the DA's internal state.  Once pushed, information might
   still be queued, pending connectivity of the DA to the network.

      |  NOTE:

   Even in cases where a round-trip exchange can occur, pull
      | mechanisms
   increase the overall amount of traffic in the
      | network and preclude
   the use of autonomy at managed devices.
      |  So, even when pull
   mechanisms are feasible, they should not be
      | considered a pragmatic
   alternative to push mechanisms.

4.4.  Efficient Data Encoding

   Messages exchanged between a DA and a DM in the DTNMA should be
   defined in a way that allows for efficient on-the-wire encoding.
   DTNMA design decisions that result in smaller message sizes should be
   preferred over those that result in larger message sizes.

   There is a relationship between message encoding and message
   processing time at a node.  Messages with few or no encodings may
   simplify node processing, whereas more compact encodings may require
   additional activities to generate/parse encoded messages.  Generally,
   compressing a message takes processing time at the sender and
   decompressing a message takes processing time at a receiver.
   Therefore, there is a design trade-off between minimizing message
   sizes and minimizing node processing.

   There is a significant advantage to smaller DTNMA message sizes in a
   challenged network.  Smaller messages require shorter periods of
   viable transmission for communication, they incur less retransmission
   cost, and they consume fewer resources when persistently stored en
   route in the network.

      |  NOTE: Naive approaches to minimizing message size through
      |  general-purpose compression algorithms do not produce minimal
      |  encodings.  Data models can, and should, be designed for
      |  compact encoding from the beginning.  Design strategies for
      |  compact encodings involve using structured data, hierarchical
      |  data models, and common substructures within data models.
      |  These strategies allow for compressibility beyond what would
      |  otherwise be achieved by computing large hash values over
      |  generalized data structures.

4.5.  Universal, Unique Data Identification

   Data elements within the DTNMA should be uniquely identifiable so
   that they can be individually manipulated.  Further, these
   identifiers should be universal -- the identifier for a data element
   should be the same, regardless of role, implementation, or network
   instance.

   Identification schemes that would be relative to a specific DA or
   specific system configuration might change over time and should be
   avoided.  Relying on relative identification schemes would require
   resynchronizing relative state when nodes in a challenged network
   reconnect after periods of partition.  This type of resynchronization
   should be avoided whenever possible.

      |  NOTE: Consider a common management technique for approximating
      |  an associative array lookup.  If a managed device tracks the
      |  number of bytes passed by multiple named interfaces, then the
      |  number of bytes through a specific named interface ("int_foo")
      |  would be retrieved in the following way:
      |
      |     1.  Query a list of ordered interface names from an agent.
      |
      |     2.  Find the name that matches "int_foo", and infer the
      |         agent's index of "int_foo" from the ordered interface
      |         list.  In this instance, assume that "int_foo" is the
      |         fourth interface in the list.
      |
      |     3.  Query the agent (again) to now return the number of
      |         bytes passed through the fourth interface.
      |
      |  Ignoring the inefficiency of two round-trip exchanges, this
      |  mechanism will fail if an agent implementation changes its
      |  index mapping between the first and second queries.
      |
      |  The desired data being queried, "number of bytes through
      |  'int_foo'", should be uniquely and universally identifiable and
      |  independent of how that data exists in any agent's custom
      |  implementation.

4.6.  Runtime Data Definitions

   The DTNMA allows for the addition of new data elements to a data
   model as part of the runtime operation of the management system.
   These definitions may represent custom data definitions that are
   applicable only for a particular device or network.  Custom
   definitions should also be able to be removed from the system during
   runtime.

   The goal of this approach is to dynamically add or remove data
   elements to the local runtime schemas as needed, such as the
   definition of new counters, new reports, or new rules.

   The custom definition of new data from existing data (such as through
   data fusion, averaging, sampling, or other mechanisms) provides the
   ability to communicate desired information in as compact a form as
   possible.

      |  NOTE: A DM could, for example, define a custom data report that
      |  includes only summary information about a specific operational
      |  event or as part of specific debugging.  DAs could then produce
      |  this smaller report until it is no longer necessary, at which
      |  point the custom report could be removed from the management
      |  system.

   Custom data elements should be calculated and used both as parameters
   for DA autonomy and for more efficient reporting to DMs.  Defining
   new data elements allows for DAs to perform local data fusion, and
   defining new reporting templates allows for DMs to specify desired
   formats and generally save on link capacity, storage, and processing
   time.

4.7.  Autonomous Operation

   The management of applications by a DA should be achievable using
   only knowledge local to the DA because DAs might need to operate
   during times when they are disconnected from a DM.

   DA autonomy may be used for simple automation of predefined tasks or
   to support semi-autonomous behavior in determining when to run tasks
   and how to configure or parameterize tasks when they are run.

   Important features provided by the DA are listed below.  These
   features work together to accomplish tasks.  As such, there is
   commonality amongst their definitions and nature of their benefits.

   Standalone Operation:  Preconfiguration allows DAs to operate without
      regular contact with other nodes in the network.  Updates for
      configurations remain difficult in a challenged network, but this
      approach removes the requirement that a DM be in the loop during
      regular operations.  Preconfiguring stimuli and responses on a DA
      during periods of connectivity allows DAs to self-manage during
      periods of disconnectivity.

   Deterministic Behavior:  Operational systems might need to act in a
      deterministic way, even in the absence of an operator in the loop.
      Deterministic behavior allows an out-of-contact DM to predict the
      state of a DA and to determine how a DA got into a particular
      state.

   Engine-Based Behavior:  Operational systems might not be able to
      deploy "mobile code" solutions [RFC4949] due to network bandwidth,
      memory or processor loading, or security concerns.  Engine-based
      approaches provide configurable behavior without incurring these
      concerns.

   Authorization and Accounting:  The DTNMA does not require a specific
      underlying transport protocol, a specific network infrastructure,
      or specific network services.  Therefore, mechanisms for
      authorization and accounting need to be present in a standard way
      at DAs and DMs to provide these functions if the underlying
      network does not.  This is particularly true in cases where
      multiple DMs may be active concurrently in the network.

   To understand the contributions of these features to a common type of
   behavior, consider the example of a managed device coming online with
   a set of preinstalled configurations.  In this case, the device's
   standalone operation comes from the preconfiguration of its local
   autonomy engine.  This engine-based behavior allows the system to
   behave in a deterministic way, and any new configurations will need
   to be authorized before being adopted.

   Features such as deterministic processing and engine-based behavior
   are separate from (but do not preclude the use of) other Artificial
   Intelligence (AI) and Machine Learning (ML) approaches for device
   management.

5.  Current Remote Management Approaches

   Several remote management solutions have been developed for both
   local area networks and wide area networks.  Their capabilities range
   from simple configuration and report generation to complex modeling
   of device settings, state, and behavior.  All of these approaches are
   successful in the domains for which they have been built but are not
   all equally functional when deployed in a challenged network.

   This section describes some of the well-known protocols for remote
   management and contrasts their purposes with the desirable properties
   of the DTNMA.  The purpose of this comparison is to identify parts of
   existing approaches that can be adopted or adapted for use in
   challenged networks and where new capabilities should be created
   specifically for such environments.

5.1.  SNMP and SMI Models

   An early and widely used example of a remote management protocol is
   SNMP, which is currently at version 3 [RFC3410].  SNMP utilizes a
   request/response
   request-response model to get and set data values within an
   arbitrarily deep object hierarchy.  Objects are used to identify data
   such as host identifiers, link utilization metrics, error rates, and
   counters between application software on managing and managed devices
   [RFC3411].  Additionally, SNMP supports a model for unidirectional
   push messages, called event notifications, based on agent-defined
   triggering events.

   SNMP relies on logical sessions with predictable round-trip latency
   to support its pull mechanism, but a single activity is likely to
   require many round-trip exchanges.  Complex management can be
   achieved, but only through careful orchestration of real-time, end-
   to-end, managing-device-generated query-and-response logic.

   There is existing work that uses the SNMP data model to support some
   low-fidelity Agent-side agent-side processing; this work includes using
   "Distributed Management Expression MIB" [RFC2982] and "Definitions of
   Managed Objects for the Delegation of Management Scripts" [RFC3165].
   However, Agent agent autonomy is not an SNMP mechanism, so support for a
   local agent response to an initiating event is limited.  In a
   challenged network where the delay between a managing device
   receiving an alert and sending a response can be significant, SNMP is
   insufficient for autonomous event handling.

5.1.1.  The SMI Modeling Language

   SNMP separates the representations for managed data models from
   messaging, sequencing, and encoding between managers and agents.
   Each data model is termed a "Management Information Base" (or "MIB")
   [RFC3418] and uses the Structure of Management Information (SMI)
   modeling language [RFC2578].  Additionally, the SMI itself is based
   on the ASN.1 syntax [ASN.1], which is used not just for SMI but for
   other, unrelated data structure specifications such as the
   Cryptographic Message Syntax (CMS) [RFC5652].  Separating data models
   from messaging and encoding is a best practice in remote management
   protocols and is also necessary for the DTNMA.

   Each SNMP MIB is composed of managed object definitions, each of
   which is associated with a hierarchical Object Identifier (OID).
   Because of the arbitrarily deep nature of MIB object trees, the size
   of OIDs is not strictly bounded by the protocol (though it may be
   bounded by implementations).

5.1.2.  SNMP and Transport

   SNMP

   SNMPv2 [RFC3416] [RFC3417] and SNMPv3 [RFC3414] can operate over a
   variety of transports, including plaintext UDP/IP [RFC3417], SSH/TCP/IP SSH/TCP/
   IP [RFC5592], and DTLS/UDP/IP or TLS/TCP/IP [RFC6353].

   SNMP uses an abstracted security model to provide authentication,
   integrity, and confidentiality.  There are options for the User-based
   Security Model (USM) [RFC3414], which uses in-message security, and
   the Transport Security Model (TSM) [RFC5591], which relies on the
   transport to provide security functions and interfaces.

5.2.  XML-Infoset-Based Protocols and YANG Data Models

   Several network management protocols, including NETCONF [RFC6241],
   RESTCONF [RFC8040], and the Constrained Application Protocol (CoAP)
   Management Interface (CORECONF) [CORE-COMI], share the same XML
   Information Set [xml-infoset] for its the information set's hierarchical
   managed information and XPath expressions [XPath] to identify nodes
   of that information model.  Since they share the same information
   model and the same data manipulation operations, together they will
   be referred to as "*CONF" protocols.  Each protocol, however,
   provides a different encoding of that information set and its related operation-
   specific
   operation-specific data.

   The YANG modeling language as defined in [RFC7950] is used to define
   the data model for these management protocols.  Currently, YANG
   represents the IETF standard for defining managed information models.

5.2.1.  The YANG Modeling Language

   The YANG modeling language defines a syntax and modular semantics for
   organizing and accessing a device's configuration or operational
   information.  YANG allows subdividing a full managed configuration
   into separate namespaces defined by separate YANG modules.  Once a
   module is developed, it is used (directly or indirectly) on both the
   client and server to serve as a contract between the two.  A YANG
   module can be complex, describing a deeply nested and interrelated
   set of data nodes, actions, and notifications.

   Unlike the separation between ASN.1 syntax and module semantics from
   higher-level SMI data model semantics as discussed in Section 5.1.1,
   YANG defines both a text syntax and module semantics together with
   data model semantics.

   The YANG modeling language provides flexibility in the organization
   of model objects to the model developer.  YANG supports a broad range
   of data types as noted in [RFC6991].  YANG also supports the
   definition of parameterized Remote Procedure Calls (RPCs) and actions
   to be executed on managed devices as well as the definition of event
   notifications within the model.

      |

   Current *CONF notification logic allows a client to subscribe
      | to the
   delivery of specific containers or data nodes defined in
      | the model,
   on either a periodic or "on-change" basis [RFC8641].
      |  These
   notification events can be filtered according to XPath or
      | subtree
   filtering [XPath] [RFC6241] as described in Section 2.2
      | of [RFC8639].

   The use of YANG for data modeling necessarily comes with some side
   effects, some of which are described here.

   Text Naming:  Data nodes, RPCs, and notifications within a YANG data
      model are named by a namespace-qualified, text-based path of the
      module, submodule, container, and any data nodes such as lists,
      leaf-lists, or leaves, without any explicit hierarchical
      organization based on data or object type.

      Existing efforts to make compressed names for YANG objects, such
      as the YANG Schema Item iDentifiers (SIDs) as discussed in
      Section 3.2 of [RFC9254], allow a node to be named by a globally
      unique integer value but are still relatively verbose (up to 8
      bytes per item) and still must be translated into text form for
      things like instance identification (see below).  Additionally,
      when representing a tree of named instances, the child elements
      can use differential encoding of SID integer values as "delta"
      integers.  The mechanisms for assigning SIDs and the lifecycle of
      those SIDs are still discussed in development [RFC9595].

   Text Values and Built-In Types:  Because the original use of YANG
      with NETCONF was to model XML Information Sets, the values and
      built-in types are necessarily text based.  JSON encoding of YANG
      data [RFC7951] allows for optimized representations of many built-
      in types; similarly, Concise Binary Object Representation (CBOR)
      encoding [RFC9254] allows for different optimized representations.

      In particular, the YANG built-in types natively support a fixed range of
      decimal fractions (Section 9.3 of [RFC7950]) but purposefully do
      not support floating-point numbers.  There are alternatives, such
      as the type bandwidth-ieee-float32 [RFC8294] or using the "binary"
      type with one of the IEEE-754 encodings.

   Deep Hierarchy:  YANG allows for, and current YANG modules take
      advantage of, the ability to deeply nest a model hierarchy to
      represent complex combinations and compositions of data nodes.
      When a model uses a deep hierarchy of nodes, this necessarily
      means that the qualified paths to name those nodes and instances
      are longer than they would be in a flat hierarchy. namespace.

   Instance Identification:  The node instances in a YANG module
      necessarily use XPath expressions for identification.  Some
      identification is constrained to be strictly within the YANG
      domain, such as "must", "when", "augment", or "deviation"
      statements.  Other identification needs to be processed by a
      managed device -- for example, via the "instance-identifier"
      built-in type.  This means that any implementation of a managed
      device must include XPath processing and related information model
      handling per Section 6.4 of [RFC7950] and its referenced
      documents.

   Protocol Coupling:  A significant amount of existing YANG tooling or
      modeling presumes the use of YANG data within a management
      protocol with specific operations available.  For example, the
      access control model defined in [RFC8341] relies on those
      operations specific to the *CONF protocols for proper behavior.

      The emergence of multiple NETCONF-derived protocols may make these
      presumptions less problematic in the future.  Work to more
      consistently identify different types of YANG modules and their
      use has been undertaken to disambiguate how YANG modules should be
      treated [RFC8199].

   Manager-Side Control:  YANG RPCs and actions execute on a managed
      device and generate an expected, structured response.  RPC
      execution is strictly limited to those issued by the manager.
      Commands are executed immediately and sequentially as they are
      received by the managed device, and there is no method to
      autonomously execute RPCs triggered by specific events or
      conditions.

   The YANG modeling language continues to evolve as new features are
   needed by adopting management protocols.

5.2.2.  NETCONF Protocol and Transport

   NETCONF is a stateful, XML-encoding-based protocol that provides a
   syntax to retrieve, edit, copy, or delete any data nodes or exposed
   functionality on a server.  It requires that underlying transport
   protocols support long-lived, reliable, low-latency, sequenced data
   delivery sessions.  A bidirectional NETCONF session needs to be
   established before any data transfer (or notification) can occur.

   The XML exchanged within NETCONF messages is structured according to
   YANG modules supported by the NETCONF agent, and the data nodes
   reside within one of possibly many datastores in accordance with the
   Network Management Datastore Architecture (NMDA) [RFC8342].

   NETCONF transports are required to provide authentication, data
   integrity, confidentiality, and replay protection.  Currently,
   NETCONF can operate over SSH/TCP/IP [RFC6242] or TLS/TCP/IP
   [RFC7589].

5.2.3.  RESTCONF Protocol and Transport

   RESTCONF is a stateless, JSON-encoding-based protocol that provides
   the same operations as NETCONF, using the same YANG modules for
   structure and the same NMDA datastores, but using RESTful exchanges
   over HTTP.  It uses HTTP-native HTTP methods to express its allowed operations:
   GET, POST, PUT, PATCH, or DELETE data nodes within a datastore.

   Although RESTCONF is a logically stateless protocol, it does rely on
   state within its transport protocol to achieve behaviors such as
   authentication and security sessions.  Because RESTCONF uses the same
   data node semantics as NETCONF, a typical activity can involve the
   use of several sequential round trips of exchanges to first discover
   managed device state and then act upon it.

5.2.4.  CORECONF Protocol and Transport

   CORECONF is an emerging stateless protocol built atop CoAP [RFC7252]
   that defines a messaging construct developed to operate specifically
   on constrained devices and networks by limiting message size and
   fragmentation.  CoAP also implements a request/response request-response system and
   methods for GET, POST, PUT, and DELETE.

5.3.  gRPC Network Management Interface (gNMI)

   Another emerging, but not IETF-affiliated, management protocol is the
   gRPC Network Management Interface (gNMI) [gNMI], which is based on
   gRPC messaging and uses Google protobuf data modeling.

   The same limitations as those listed above for RESTCONF apply to gNMI
   because of its reliance on synchronous HTTP exchanges and TLS for
   normal operations, as well as the likely deep nesting of data
   schemas.  There is a capability for  gNMI to transport is capable of transporting JSON-encoded YANG-modeled
   data, but this composing how to compose such data is not yet fully standardized and
   relies on specific tool integrations to operate. standardized.

5.3.1.  The Protobuf Modeling Language

   The data managed and exchanged via gNMI is encoded and modeled using
   Google protobuf, an encoding and modeling syntax not affiliated with
   the IETF (although an attempt has been made and abandoned
   [PROTOCOL-BUFFERS]).

   Because the protobuf modeling syntax is a relatively low-level syntax
   (about the same as ASN.1 or CBOR), there are some efforts as part of
   the OpenConfig work [gNMI] to translate YANG modules into protobuf
   schemas (similar to translation to XML or JSON schemas for NETCONF
   and RESTCONF, respectively), but there is no required
   interoperability between management via gRPC or any of the *CONF
   protocols.

5.3.2.  gRPC Protocol and Transport

   The message encoding and exchange for gNMI, as the name implies, is
   the gRPC protocol [gRPC].  gRPC exclusively uses HTTP/2 [RFC9113] for
   transport and relies on some aspects specific to HTTP/2 for its
   operations (such as HTTP trailer fields).  While not mandated by
   gRPC, when used to transport gNMI data, TLS is required for transport
   security.

5.4.  Intelligent Platform Management Interface (IPMI)

   A lower-level remote management protocol, intended to be used to
   manage hardware devices and network appliances below the operating
   system (OS), is the Intelligent Platform Management Interface (IPMI),
   standardized in [IPMI].  The IPMI is focused on health monitoring,
   event logging, firmware management, and Serial over LAN (SOL) remote
   console access in a "pre-OS or OS-absent" host environment.  The IPMI
   operates over a companion Remote Management Control Protocol (RMCP)
   for messaging, which itself can use UDP for transport.

   Because the IPMI and RCMP are tailored to low-level and well-
   connected devices within a data center, with typical workflows
   requiring many messaging round trips or low-latency interactive
   sessions, they are not suitable for operation over a challenged
   network.

5.5.  Autonomic Networking

   The future of network operations requires more autonomous behavior,
   including self-configuration, self-management, self-healing, and
   self-optimization.  One approach to support this is termed "Autonomic
   Networking" [RFC7575].

   There is a large and growing set of work within the IETF focused on
   developing an Autonomic Networking Integrated Model and Approach
   (ANIMA).  The ANIMA work has developed a comprehensive reference
   model for distributing autonomic functions across multiple nodes in
   an Autonomic Networking infrastructure [RFC8993].

   This work, focused on learning the behavior of distributed systems to
   predict future events, is an emerging network management capability.
   This includes the development of signaling protocols such as the
   GeneRic Autonomic Signaling Protocol (GRASP) [RFC8990] and the
   Autonomic Control Plane (ACP) [RFC8368].

   Both autonomic and challenged networks require similar degrees of
   autonomy.  However, challenged networks cannot provide the complex
   coordination between nodes and distributed supporting infrastructure
   necessary for the frequent data exchanges for negotiation, learning,
   and bootstrapping associated with the above capabilities.

   There is some emerging work in ANIMA as to how disconnected devices
   might join and leave the ACP over time.  However, this work is
   addressing a different problem than that encountered by challenged
   networks.

5.6.  Deep Space Autonomy

   Outside of the terrestrial networking community, there are existing
   and established remote management systems used for deep space mission
   operations.  Two examples of such systems are the New Horizons
   mission to Pluto [NEW-HORIZONS] and the Double Asteroid Redirection
   Test (DART) mission to the asteroid Dimorphos [DART].

   The DTNMA has some heritage in the concepts of deep space autonomy,
   but each of those mission instantiations uses mission-specific data
   encoding, messaging, and transport as well as mission-specific (or
   heavily mission-tailored) modeling concepts and languages.  Part of
   the goal of the DTNMA is to take the proven concepts from these
   missions and standardize a messaging syntax as well as a modular data
   modeling method.

6.  Motivation for New Features

   Management mechanisms that provide the complete set of DTNMA
   desirable properties do not currently exist.  This is not surprising,
   since autonomous management in the context of a challenged networking
   environment is a new and emerging use case.

   In particular, a management architecture is needed that integrates
   the following motivating features.

   Open-Loop Control:  Freedom from a request-response architecture,
      API, or other presumption of timely round-trip communications.
      This is particularly important when managing networks that are not
      built over an HTTP or TCP/TLS infrastructure.

   Standard Autonomy Model:  An autonomy model that allows for standard
      expressions of policy to guarantee deterministic behavior across
      devices and vendor implementations.

   Compressible Model Structure:  A data model that allows for very
      compact encodings by defining and exploiting common structures for
      data schemas.

   Combining these new features with existing mechanisms for message
   data exchange (such as BP), data representations (such as CBOR), and
   data modeling languages (such as YANG) will form a pragmatic approach
   to defining challenged network management.

7.  Reference Model

   This section describes a reference model for reasoning about analyzing network
   management concepts for challenged networks (generally) and those
   conforming to the DTN architecture (in particular).  The goal of this
   section is to describe how DTNMA services provide DTNMA desirable
   properties.

7.1.  Important Concepts

   Like other network management architectures, the DTNMA draws a
   logical distinction between a managed device and a managing device.
   Managed devices use a DA to manage resident applications.  Managing
   devices use a DM to both monitor and control DAs.

      |  NOTE:

   The terms "managing" and "managed" represent logical
      | characteristics
   of a device and are not, themselves, mutually
      | exclusive.  For
   example, a managed device might, itself, also
      | manage some other
   device in the network.  Therefore, a device
      | may support either or
   both of these characteristics.

   The DTNMA differs from some other management architectures in three
   significant ways, all related to the need for a device to self-manage
   when disconnected from a managing device.

   Pre-Shared Definitions:  Managing and managed devices should operate
      using pre-shared data definitions and models.  This implies that
      static definitions should be standardized whenever possible and
      that managing and managed devices may need to negotiate
      definitions during periods of connectivity.

   Agent Self-Management:  A managed device may find itself disconnected
      from its managing device.  In many challenged networking
      scenarios, a managed device may spend the majority of its time
      without a regular connection to a managing device.  In these
      cases, DAs manage themselves by applying pre-shared policies
      received from managing devices.

   Command-Based Interface:  Managing devices communicate with managed
      devices through a command-based interface.  Instead of exchanging
      variables, objects, or documents, a managing device issues
      commands to be run by a managed device.  These commands may create
      or update variables, change datastores, or impact the managed
      device in ways similar to other network management approaches.
      The use of commands is, in part, driven by the need for DAs to
      receive updates from both remote management devices and local
      autonomy.  The use of controls Controls for the implementation of commands
      is discussed in more detail in Section 9.5.

7.2.  Model Overview

   A DTNMA reference model is provided in Figure 2 below.  In this
   reference model, applications and services on a managing device
   communicate with a DM that uses pre-shared definitions to create a
   set of policy directives that can be sent to a managed device's DA
   via a command-based interface.  The DA provides local monitoring and
   control (commanding) of the applications and services resident on the
   managed device.  The DA also performs local data fusion as necessary
   to synthesize data products (such as reports) that can be sent back
   to the DM when appropriate.

       Managed Device                            Managing Device
+----------------------------+           +-----------------------------+
| +------------------------+ |           | +-------------------------+ |
| |Applications & Services | |           | | Applications & Services | |
| +----------^-------------+ |           | +-----------^-------------+ |
|            |               |           |             |               |
| +----------v-------------+ |           | +-----------v-------------+ |
| | DTNMA  +-------------+ | |           | | +-----------+   DTNMA   | |
| | AGENT  | Monitor and | | |Commanding | | |  Policy   |  MANAGER  | |
| |        |   Control   | | |<==========| | | Encoding  |           | |
| | +------+-------------+ | |           | | +-----------+-------+   | |
| | |Admin | Data Fusion | | |==========>| | | Reporting | Admin |   | |
| | +------+-------------+ | | Reporting | | +-----------+-------+   | |
| +------------------------+ |           | +-------------------------+ |
+----------------------------+           +-----------------------------+
           ^                                             ^
           |            Pre-Shared Definitions           |
           |        +---------------------------+        |
           +--------| - Autonomy Model          |--------+
                    | - Application Data Models |
                    | - Runtime Datastores      |
                    +---------------------------+

                   Figure 2: DTNMA Reference Model

   This model preserves the familiar concept of "managers" resident on
   managing devices and "agents" resident on managed devices.  However,
   the DTNMA model is unique in how the DM and DA operate.  The DM is
   used to preconfigure DAs in the network with management policies.  It
   is expected that the DAs, themselves, perform monitoring and control
   functions on their own.  In this way, a properly configured DA may
   operate without a reliable connection back to a DM.

7.3.  Functional Elements

   The reference model illustrated in Figure 2 implies the existence of
   certain logical components whose roles and responsibilities are
   discussed in this section.

7.3.1.  Managed Applications and Services

   By definition, managed applications and services reside on a managed
   device.  These software entities can be controlled through some
   interface by the DA, and their state can be sampled as part of
   periodic monitoring.  It is presumed that the DA on the managed
   device has the proper data model, control interface, and permissions
   to alter the configuration and behavior of these software
   applications.

7.3.2.  DTNMA Agent (DA)

   A DA resides on a managed device.  As is the case with other network
   management approaches, this agent is responsible for the monitoring
   and control of the applications local to that device.  Unlike other
   network management approaches, the agent accomplishes this task
   without a regular connection to a DM.

   The DA performs three major functions on a managed device: the
   monitoring and control of local applications, production of data
   analytics, and the administrative control of the agent itself.

7.3.2.1.  Monitoring and Control

   DAs monitor the status of applications running on their managed
   device and selectively control those applications as a function of
   that monitoring.  The following components are used to perform
   monitoring and control on an agent.

   Rules

   Rule Database:
      Each DA maintains a database of policy expressions that form rules
      regarding the behavior of the managed device.  Within this
      database, each rule regarding behavior is a tuple of a stimulus
      and a response.  Within the DTNMA, these rules are the embodiment
      of policy expressions received from DMs and evaluated at regular
      intervals by the autonomy engine.  The rules rule database is the
      collection of active rules known to the DA.

   Autonomy Engine:
      The DA autonomy engine monitors the state of the managed device,
      looking for predefined stimuli and, when such stimuli are
      encountered, issuing a predefined response.  To the extent that
      this function is driven by the rules rule database, this engine acts as
      a policy execution engine.  This engine may also be directly
      configured by managers during periods of connectivity for actions
      separate from those in the rules rule database (such as enabling or
      disabling sets of rules).  Once configured, the engine may
      function without other access to any managing device.  This engine
      may also reconfigure itself as a function of policy.

   Application Control Interfaces:
      DAs support control interfaces for all managed applications.
      Control interfaces are used to alter the configuration and
      behavior of an application.  These interfaces may be custom for
      each application or as provided through a common framework, such
      as provided by an
      protocol, or OS.

7.3.2.2.  Data Fusion

   DAs generate new data elements as a function of the current state of
   the managed device and its applications.  These new data products may
   take the form of individual data values or of new collections of data
   used for reporting.  The logical components responsible for these
   behaviors are as follows.

   Application Data Interfaces:
      DAs support mechanisms by which important state is retrieved from
      various applications resident on the managed device.  These data
      interfaces may be custom for each application or as provided
      through a common framework, such as provided by an protocol, or OS.

   Data Value Generators:
      DAs may support the generation of new data values as a function of
      other values collected from the managed device.  These data
      generators may be configured with descriptions of data values, and
      the data values they generate may be included in the overall
      monitoring and reporting associated with the managed device.

   Report Generators:
      DAs may, as appropriate, generate collections of data values and
      provide them to whatever local mechanism takes responsibility for
      their eventual transmission (or expiration and removal).  Reports
      can be generated as a matter of policy or in response to the
      handling of critical events (such as errors) or other logging
      needs.  The generation of a report is independent of whether there
      exists any connectivity between a DA and a DM.

7.3.2.3.  Administration

   DAs perform a variety of administrative services in support of their
   configuration, such as the following.

   Manager Mapping:
      The DTNMA allows for a many-to-many relationship amongst DAs and
      DMs.  A single DM may configure multiple DAs, and a single DA may
      be configured by multiple DMs.  Multiple managers may exist in a
      network for at least the following two reasons.  First, different
      managers may exist to control different applications on a device.
      Second, multiple managers increase the likelihood of an agent
      encountering a manager when operating in a sparse or challenged
      environment.

      While the need for multiple managers is required are needed for operating proper operation in a
      dynamically partitioned network, this situation allows for the
      possibility of conflicting information from
      different managers. managers can result.  Implementations of the DTNMA
      should consider conflict resolution mechanisms.  Such mechanisms
      might include analyzing managed content, time, agent location, or
      other relevant information to select one manager input over other
      manager inputs.

   Data Verifiers:
      DAs might handle large amounts of data produced by various
      sources, to include data from local managed applications, remote
      managers, and self-calculated values.  DAs should ensure, when
      possible, that externally generated data values have the proper
      syntax and semantic constraints (e.g., data type and ranges) and
      any required authorization.

   Access Controllers:
      DAs support authorized access to the management of individual
      applications, to include the administrative management of the
      agent itself.  This means that a manager may only set policy on
      the agent pursuant to verifying that the manager is authorized to
      do so.

7.3.3.  Managing Applications and Services

   Managing applications and services reside on a managing device and
   serve as both the source of DA policy statements and the target of DA
   reporting.  They may operate with or without an operator in the loop.

   Unlike management applications in unchallenged networks, these
   applications cannot exert closed-loop control over any managed device
   application.  Instead, they exercise open-loop control by producing
   policies that can be configured and enforced on managed devices by
   DAs.

      |  NOTE: Closed-loop control in this context refers to the
      |  practice of waiting for a response from a managed device prior
      |  to issuing new commands to that device.  These "loops" may be
      |  closed quickly (in milliseconds) or over much longer periods
      |  (hours, days, years).  The alternative to closed-loop control
      |  is open-loop control, where the issuance of new commands is not
      |  dependent on receiving responses to previous commands.
      |  Additionally, there might not be a one-to-one mapping between
      |  commands and responses.  A DA may, for example, produce a
      |  single response that represents the end state of applying
      |  multiple commands.

7.3.4.  DTNMA Manager (DM)

   A DM resides on a managing device.  This manager provides an
   interface between various managing applications and services and the
   DAs that enforce their policies.  In providing this interface, DMs
   translate between whatever native innate interface exists to various
   managing applications and the autonomy models used to encode
   management policy.

   The DM performs three major functions on a managing device: policy
   encoding, reporting, and administration.

7.3.4.1.  Policy Encoding

   DMs translate policy directives from managing applications and
   services into standardized policy expressions that can be recognized
   by DAs.  The following logical components are used to perform this
   policy encoding.

   Application Control Interfaces:
      DMs support control interfaces for managing applications.  These
      control interfaces are used to receive desired policy statements
      from applications.  These interfaces may be custom for each
      application or as provided through a common framework, protocol,
      or OS.

   Policy Encoders:
      DAs implement a standardized autonomy model comprising
      standardized data elements.  This allows the open-loop control
      structures provided by managing applications to be represented in
      a common language.  Policy encoders perform this encoding
      function.

   Policy Aggregators:
      DMs collect multiple encoded policies into messages that can be
      sent to DAs over the network.  This implies the proper addressing
      of agents and the creation of messages that support store-and-
      forward operations.  It is recommended that control messages be
      packaged using BP bundles when there may be intermittent
      connectivity between DMs and DAs.

7.3.4.2.  Reporting

   DMs receive reports on the status of managed devices during periods
   of connectivity with the DAs on those devices.  The following logical
   components are needed to implement reporting capabilities on a DM.

   Report Collectors:
      DMs receive reports from DAs in an asynchronous manner.  This
      means that reports may be received out of chronological order and
      in ways that are difficult or impossible to associate with a
      specific policy from a managing application.  DMs collect these
      reports and extract their data in support of subsequent data
      analytics.

   Data Analyzers:
      DMs review sets of data reports from DAs with the purpose of
      extracting relevant data to communicate with managing
      applications.  This may include simple data extraction or may
      include more complex processing such as data conversion, data
      fusion, and appropriate data analytics.

   Application Data Interfaces:
      DMs support mechanisms by which data retrieved from DAs may be
      provided back to managing devices.  These interfaces may be custom
      for each application or as provided through a common framework,
      protocol, or OS.

7.3.4.3.  Administration

   Managers

   DMs in the DTNMA perform a variety of administrative services, such
   as the following.

   Agent Mappings:
      The DTNMA allows DMs to communicate with multiple DAs.  However,
      not every agent in a network is expected to support the same set
      of application data models or otherwise have the same set of
      managed applications running.  For this reason, DMs determine
      individual DA capabilities to ensure that only appropriate
      Controls are sent to a DA.

   Data Verifiers:
      DMs handle large amounts of data produced by various sources, to
      include data from managing applications and DAs.  DMs should
      ensure, when possible, that data values received from DAs over a
      network have the proper syntax and semantic constraints (e.g.,
      data type and ranges) and any required authorization.

   Access Controllers:
      DMs should only send Controls to agents DAs when the manager is
      configured with appropriate access to both the agent and the
      applications being managed.

7.3.5.  Pre-Shared Definitions

   A consequence of operating in a challenged environment is the
   potential inability to negotiate information in real time.  For this
   reason, the DTNMA requires that managed and managing devices operate
   using pre-shared definitions rather than relying on data definition
   negotiation.

   The three types of pre-shared definitions in the DTNMA are the DA
   autonomy model, managed application data models, and any runtime data
   shared by managers and agents.

   Autonomy Model:
      A DTNMA autonomy model represents the data elements and associated
      autonomy structures that define the behavior of the agent autonomy
      engine.  A standardized autonomy model allows for individual
      implementations of DAs and DMs to interoperate.  A standardized
      model also provides guidance to the design and implementation of
      both managed and managing applications.

   Application Data Models:
      As with other network management architectures, the DTNMA
      presupposes that managed applications (and services) define their
      own data models.  These data models include the data produced by,
      and Controls implemented by, the application.  These models are
      expected to be static for individual applications and standardized
      for applications implementing standard protocols.

   Runtime Datastores:
      Runtime datastores, by definition, include data that is defined at
      runtime.  As such, the data is not pre-shared prior to the
      deployment of DMs and DAs.  Pre-sharing in this context means that
      DMs and DAs are able to define and synchronize data elements prior
      to their operational use in the system.  This synchronization
      happens during periods of connectivity between DMs and DAs.

8.  Desired Services

   This section describes the services provided by DTNMA components on
   both managing and managed devices.  Many  Most of the services discussed in
   this section attempt to provide continuous operation of a managed
   device through periods of no connectivity with a managing device.

8.1.  Local Monitoring and Control

   DTNMA monitoring is associated with some DA autonomy engine.  The
   term "monitoring" implies regular access to information such that
   state changes may be acted upon within some response time period.

   Predicate autonomy on a managed device should collect state
   associated with the device at regular intervals and evaluate that
   collected state for any changes that require a preventative or
   corrective action.  Similarly, this monitoring may cause the device
   to generate one or more reports destined to a managing device.

   Like monitoring, DTNMA control results in actions by the agent to
   change the state or behavior of the managed device.  All control in
   the DTNMA is local control.  In cases where there exists a timely
   connection to a manager, DM, received Controls are still evaluated and run
   locally as part of local autonomy.  In this case, the autonomy
   stimulus is the receipt of the Control, and the response is to
   immediately run the Control.  In this way, there is never a
   dependency on a session or other stateful exchange with any remote
   entity.

8.2.  Local Data Fusion

   DTNMA fusion services produce new data products from existing state
   on the managed device.  These fusion products can be anything from
   simple summations of sampled counters to complex calculations of
   behavior over time.

   Fusion is an important service in the DTNMA because fusion products
   are part of the overall state of a managed device.  Complete
   knowledge of this overall state is important for the management of
   the device, and the predicates of rules on a DA may refer to fused
   data.

   In situ data fusion is an important function, as it allows for the
   construction of intermediate summary data, the reduction of stored
   and transmitted raw data, and possibly fewer predicates in rule
   definitions; this type of data fusion otherwise insulates the data source from
   conclusions drawn from that data.

   The DTNMA requires fusion to occur on the managed device itself.  If
   the network is partitioned such that no connection to a managing
   device is available, then fusion needs to happen locally.  Similarly,
   connections to a managing device might not remain active long enough
   for round-trip data exchange or may not have the bandwidth to send
   all sampled data.

      |  NOTE: The DTNMA does not restrict the storage and transmission
      |  of raw (pre-fused) data.  Such raw data can be useful for
      |  debugging managed devices, understanding complex interactions
      |  and underlying conditions, and tuning for better performance
      |  and/or better outcomes.

8.3.  Remote Configuration

   DTNMA configuration services update the local configuration of a
   managed device with the intent of impacting the behavior and
   capabilities of that device.

   The DTNMA configuration service is unique in that the selection of
   managed device configurations occurs as a function of the state of
   the device.  This implies that management proxies on the device store
   multiple configuration functions that can be applied as needed
   without consultation from a managing device.

      |

   This approach differs from other management concepts of
      | selecting
   from multiple datastores.  DTNMA configuration
      | functions can target
   individual data elements and can calculate
      | new values from local
   device state.

   When detecting stimuli, the agent autonomy engine supports a
   mechanism for evaluating whether application monitoring data or
   runtime data values are recent enough to indicate a change of state.
   In cases where data has not been updated recently, it may be
   considered stale and therefore not used to reliably indicate that
   some stimulus has occurred.

8.4.  Remote Reporting

   DTNMA reporting services collect information known to the managed
   device and prepare it for eventual transmission to one or more
   managing devices.  The contents of these reports, and the frequency
   at which they are generated, occur as a function of the state of the
   managed device, independent of the managing device.

   Once generated, it is expected that reports might be queued, pending
   a connection back to a managing device.  Therefore, reports need to
   be differentiable as a function of the time they were generated.

      |  NOTE: When reports are queued pending transmission, the overall
      |  storage capacity at the queuing device needs to be considered.
      |  There may be cases where queued reports can be considered
      |  expired because they have been either queued for too long or
      |  replaced by a newer report.  When a report is considered
      |  expired, it may be considered for removal and, thus, never
      |  transmitted.  This consideration is expected to be part of the
      |  implementation of the queuing device and not the responsibility
      |  of the reporting function within the DTNMA.

   When reports are sent to a managing device over a challenged network,
   they may arrive out of order due to taking different paths through
   the network or being delayed due to retransmissions.  A managing
   device should not infer meaning from the order in which reports are
   received.

   Reports may or may not be associated with a specific Control.  Some
   reports may be annotated with the Control that caused the report to
   be generated.  Sometimes, a single report will represent the end
   state of applying multiple Controls.

8.5.  Authorization

   Both local and remote services provided by the DTNMA affect the
   behavior of multiple applications on a managed device and may
   interface with multiple managing devices.

   Authorization services enforce the potentially complex mapping of
   other DTNMA services amongst managed and managing devices in the
   network.  For example, fine-grained access control can determine
   which managing devices receive which reports, and what Controls can
   be used to alter which managed applications.

   This is particularly beneficial in networks that deal with either
   multiple administrative entities or overlay networks that cross
   administrative boundaries.  Allowlists, blocklists, key-based
   infrastructures, or other schemes may be used for this purpose.

9.  Logical Autonomy Model

   An important characteristic of the DTNMA is the shift in the role of
   a managing device.  One way to describe the behavior of the agent
   autonomy engine is to describe the characteristics of the autonomy
   model it implements.

   This section describes a logical autonomy model in terms of the
   abstract data elements that would comprise the model.  Defining
   abstract data elements allows for an unambiguous discussion of the
   behavior of an autonomy model without mandating a particular design,
   encoding, or transport associated with that model.

9.1.  Overview

   A managing autonomy capability on a potentially disconnected device
   needs to behave in both an expressive and deterministic way.
   Expressivity allows for the model to be configured for a wide range
   of future situations.  Determinism allows for the forensic
   reconstruction of device behavior as part of debugging or recovery
   efforts.  It also is necessary to ensure predictable behavior.

      |  NOTE: The use of predicate logic and a stimulus-response system
      |  does not conflict with the use of higher-level autonomous
      |  functions or the incorporation of Machine Learning (ML).
      |  Specifically, the DTNMA deterministic autonomy model can
      |  coexist with other autonomous functions managing applications
      |  and network services.
      |
      |  An example of such coexistence is the use of the DTNMA model to
      |  ensure that a device stays within safe operating parameters
      |  while a less deterministic ML model directs simpler other behaviors
      | for
      |  the device.

   The DTNMA autonomy model is a rule-based model in which individual
   rules associate a pre-identified stimulus with a preconfigured
   response to that stimulus.

   Stimuli are identified using one or more predicate logic expressions
   that examine aspects of the state of the managed device.  Responses
   are implemented by running one or more procedures on the managed
   device.

   In its simplest form, a stimulus is a single predicate expression of
   a condition that examines some aspect of the state of the managed
   device.  When the condition is met, a predetermined response is
   applied.  This behavior can be captured using the construct:

               IF <condition 1> THEN <response 1>; 1>

   In more complex forms, a stimulus may include both a common condition
   shared by multiple rules and a specific condition for each individual
   rule.  If the common condition is not met, the evaluation of the
   specific condition of each rule sharing the common condition can be
   skipped.  In this way, the total number of predicate evaluations can
   be reduced.  This behavior can be captured using the construct:

               IF <common condition> THEN
                 IF <specific condition 1> THEN <response 1>
                 IF <specific condition 2> THEN <response 2>
                 IF <specific condition 3> THEN <response 3>

      |  NOTE: The DTNMA model remains a stimulus-response system,
      |  regardless of whether a common condition is part of the
      |  stimulus.  However, it is recommended that implementations
      |  incorporate a common condition because of the efficiency
      |  provided by such a bulk evaluation.
      |
      |  NOTE: One use of a stimulus "common condition" is to associate
      |  the condition with an onboard event such as the expiring of a
      |  timer or the changing of a monitored value.
      |
      |  NOTE:

   The DTNMA does not prescribe when to evaluate rule
      | stimuli.
   Implementations may choose to evaluate rule stimuli
      | at periodic
   intervals (such as 1 Hz or 100 Hz).  When stimuli
      | include onboard
   events, implementations may choose to perform
      | an immediate evaluation
   at the time of the event rather than
      | waiting for a periodic
   evaluation.

   The flow of data into and out of the agent autonomy engine is
   illustrated in Figure 3.

  Managed Applications |           DTNMA Agent          | DTNMA Manager
 +---------------------+--------------------------------+--------------+
                       |   +---------+                  |
                       |   |  Local  |                  |   Encoded
                       |   | Rule DB |<-------------------- Policy
                       |   +---------+                  |   Expressions
                       |        ^                       |
                       |        |                       |
                       |        v                       |
                       |   +----------+    +---------+  |
     Monitoring Data------>|   Agent  |    | Runtime |  |
                       |   | Autonomy |<-->|  Data-  |<---- Definitions
 Application Control<------|  Engine  |    |  store  |  |
                       |   +----------+    +---------+  |
                       |         |                      |
                       |         +-------------------------> Reports
                       |                                |

                     Figure 3: DTNMA Autonomy Model

   In the model shown in Figure 3, the autonomy engine stores the
   combination of stimulus conditions and associated responses as a set
   of "rules" in a rules rule database.  This database is updated through the
   execution of the autonomy engine and as configured from policy
   statements received by managers. DMs.

   Stimuli are detected by examining the state of applications as
   reported through application monitoring interfaces and through any
   locally derived data.  Local data is calculated in accordance with
   definitions also provided by managers DMs as part of the runtime datastore.

   Responses to stimuli may include updates to the rules rule database,
   updates to the runtime datastore, Controls sent to applications, and
   the generation of reports.

9.2.  Model Characteristics

   There are several practical challenges to the implementation of a
   distributed rule-based system.  Large numbers of rules may be
   difficult to understand, deconflict, and debug.  Rules whose
   conditions are given by fused or other dynamic data may require data
   logging and reporting for deterministic offline analysis.  Rule
   differences across managed devices may lead to oscillating effects.
   This section identifies those characteristics of an autonomy model
   that might help implementations mitigate some of these challenges.

   There are a number of ways to represent data values, and many data
   modeling languages exist for this purpose.  When considering how to
   model data in the context of the DTNMA autonomy model, there are some
   modeling features that should be present to enable functionality.
   There are also some modeling features that should be prevented to
   avoid ambiguity.

   Traditional

   Conventional network management approaches favor flexibility in their
   data models.  The DTNMA stresses deterministic behavior that supports
   forensic analysis of agent activities "after the fact".  As such, the
   following statements should be true of all data representations
   relating to DTNMA autonomy.

   Strong Typing:  The predicates and expressions that comprise the
      autonomy services in the DTNMA should require strict data typing.
      This avoids errors associated with implicit data conversions and
      helps detect misconfigurations.

   Acyclic Dependency:  Many dependencies exist in an autonomy model,
      particularly when combining individual expressions or results to
      create complex behaviors.  Implementations that conform to the
      DTNMA need to prevent circular dependencies.

   Fresh Data:  Autonomy models operating on data values presume that
      their data inputs represent the actionable state of the managed
      device.  If a data value has failed to be refreshed within a time
      period, autonomy might incorrectly infer an operational state.
      Regardless of whether a data value has changed, DTNMA
      implementations should provide some indicator of whether the data
      value is "fresh", i.e., meaning that it still represents the
      current state of the device.

   Pervasive Parameterization:  Where possible, autonomy model objects
      should support parameterization to allow for flexibility in the
      specification.  Parameterization allows for the definition of
      fewer unique model objects and also can support the substitution
      of local device state when exercising device control or data
      reporting.

   Configurable Cardinality:  The number of data values that can be
      supported in a given implementation is finite.  For devices
      operating in challenged environments, the number of supported
      objects may be far fewer than the number of objects that can be
      supported by devices in well-resourced environments.  DTNMA
      implementations should define limits to the number of supported
      objects that can be active in a system at one time, as a function
      of the resources available to the implementation.

   Control-Based Updates:  The agent autonomy engine changes the state
      of the managed device by running Controls on the device.  This is
      different from approaches where the behavior of a managed device
      is influenced by updating configuration values, such as in a table
      or datastore.  Altering behavior via one or more Controls allows
      checking all preconditions before making changes as well as
      providing more granularity in the way in which the device is
      updated.  Where necessary, Controls can be defined to perform bulk
      updates of configuration data so as not to lose that update
      modality.  One important update precondition is that the system is
      not performing an action that would prevent the update (such as
      currently applying a competing update).

9.3.  Data Value Representation

   The expressive representation of simple data values is fundamental to
   the successful construction and evaluation of predicates in the DTNMA
   autonomy model.  When defining such values, there are useful
   distinctions regarding how values are identified and whether values
   are generated in a way that is internal or external to the autonomy
   model.

   A DTNMA data value should combine a base type (e.g., integer, real,
   string) representation with relevant semantic information.  Base
   types are used for proper storage and encoding.  Semantic information
   allows for additional typing, constraint definitions, and mnemonic
   naming.  This expanded definition of data values allows for better
   predicate construction, better evaluation, and early type checking.

   Data values may further be annotated based on whether their value is
   the result of a DA calculation or the result of some external process
   on the managed device.  For example, operators may wish to know which
   values can be updated by actions on the DA versus which values (such
   as sensor readings) cannot be reliably changed because they are
   calculated in a way that is external to the DA.

9.4.  Data Reporting

   The DTNMA autonomy model should, as required, report on the state of
   its managed device (to include the state of the model itself).  This
   reporting should be done as a function of the changing state of the
   managed device, independent of the connection to any managing device.
   Queuing reports allows for later forensic analysis of device
   behavior; this feature is a desirable property of DTNMA management.

   DTNMA data reporting consists of the production of some data report
   instance conforming to a data report schema.  The use of schemas
   allows a report instance to identify the schema to which it conforms
   instead of carrying the structure in the report itself.  This
   approach can significantly reduce the size of generated reports.

      |  NOTE:

   The DTNMA data reporting concept is intentionally
      | distinct from the
   concept of exchanging datastores across a
      | network.  It is envisioned
   that a DA might generate a data
      | report instance of a data report
   schema at regular intervals or
      | in response to local events.  In this
   model, many report
      | schemas may be defined to capture unique, relevant
   combinations
      | of known data values rather than sending bulk datastores off-
      |  platform
   off-platform for analysis.

      |
      |  NOTE: It is not required that data report schemas be tabular in
      |  nature.  Individual implementations might define tabular
      |  schemas for table-like data and other report schemas for more
      |  heterogeneous reporting.

9.5.  Command Execution

   The agent autonomy engine requires that managed devices issue
   commands on themselves as if they were otherwise being controlled by
   a managing device.  The DTNMA implements commanding through the use
   of Controls and macros.

   Controls represent parameterized, predefined procedures run by the DA
   either as directed by the DM or as part of a rule response from the
   DA autonomy engine.  Macros represent ordered sequences of Controls.

   Controls are conceptually similar to RPCs in that they represent
   parameterized functions run on the managed device.  However, they are
   conceptually dissimilar to RPCs in that they do not have a concept of
   a return code because they operate over an asynchronous transport.
   The concept of a return code in an RPC implies a synchronous
   relationship between the caller of the procedure and the procedure
   being called, which might not be possible within the DTNMA.

   The success or failure of a Control may be handled locally by the
   agent autonomy engine.  Local error handling is particularly
   important in this architecture, given the potential for long periods
   of disconnectivity between a DA and a DM.  The failure of one or more
   Controls is part of the state of the DA and can be used to trigger
   rules within the DA autonomy engine.

   The impact of a Control is externally observable via the generation
   and eventual examination of data reports produced by the managed
   device.

   The failure of certain Controls might leave a managed device in an
   undesirable state.  Therefore, it is important that there be
   consideration for Control-specific recovery mechanisms (such as a
   rollback or safing mechanism).  When a Control that is part of a
   macro (such as in an autonomy response) fails, there may be a need to
   implement a safe state for the managed device based on the nature of
   the failure.

      |  NOTE: The use of the term "Control" in the DTNMA is derived in
      |  part from the concept of Command and Control (C2), where
      |  control implies the operational instructions undertaken to
      |  implement (or maintain) a commanded objective.  The DA autonomy
      |  engine implements controls on a managed device to allow it to
      |  fulfill some commanded objective known by a (possibly
      |  disconnected) managing device.
      |
      |  For example, a device might be commanded to maintain a safe
      |  internal thermal environment.  Actions taken by a DA to manage
      |  heaters, louvers, and other temperature-affecting components
      |  are controls taken in service of that commanded objective.

9.6.  Predicate Autonomy Rules

   As discussed in Section 9.1, the DTNMA rule-based stimulus-response
   system associates stimulus detection with a predetermined response.
   Rules may be categorized based on whether (1) their stimuli include
   generic statements of managed device state or (2) they are optimized
   to only consider the passage of time on the device.

   State-based rules are those whose stimulus is based on the evaluated
   state of the managed device.  Time-based rules are a unique subset of
   state-based rules whose stimulus is given only by a time-based event.
   Implementations might create different structures and evaluation
   mechanisms for these two different types of rules to achieve more
   efficient processing on a platform.

10.  Use Cases

   Using the autonomy model defined in Section 9, this section describes
   flows through sample configurations conforming to the DTNMA.  These
   use cases illustrate remote configuration, local monitoring and
   control, support for multiple managers, DMs, and data fusion.

10.1.  Notation

   The use cases presented in this section are documented with a
   shorthand notation to describe the types of data sent between
   managers and agents.  This notation, outlined in Table 1, leverages
   the definitions of the autonomy model components defined in
   Section 9.

     +==================+===============================+===========+

   +==============+=======================================+===========+
   |     Term     |               Definition              |  Example  |
     +==================+===============================+===========+
   +==============+=======================================+===========+
   |     EDD#     |   Externally Defined Data -- a data   |   EDD1,   |
   |              |  data     value defined in a way that is    |    EDD2   |
   |              |  that is          external to the DA.          |           |
     +------------------+-------------------------------+-----------+
   +--------------+---------------------------------------+-----------+
   |      V#      | Variable -- a data value defined in a | V1 = EDD1 |
   |              |    defined in a    way that is   |    + 7    |
     |                  | internal to the DA.    |    + 7    |
     +------------------+-------------------------------+-----------+
   +--------------+---------------------------------------+-----------+
   |     EXPR     |    Predicate expression -- used to    |   V1 > 5  |
   |              |   to        define a rule stimulus.        |           |
     +------------------+-------------------------------+-----------+
   +--------------+---------------------------------------+-----------+
   |      ID      |        DTNMA Object Identifier.       |  V1, EDD2 |
     +------------------+-------------------------------+-----------+
   +--------------+---------------------------------------+-----------+
   |     ACL#     |    Enumerated Access Control   |    ACL1   |
     |                  | List.    |    ACL1   |
     +------------------+-------------------------------+-----------+
   +--------------+---------------------------------------+-----------+
   | DEF(ACL,ID,EXPR) DEF(ACL, ID, |  Define ID "ID" from expression.  Allow  | DEF(ACL1, |
   |    EXPR)     |  Allow managers       DMs in ACL to see this ID.      |  V1, EDD1 |
   |              |            this ID.                                       |  + EDD2)  |
     +------------------+-------------------------------+-----------+
   +--------------+---------------------------------------+-----------+
   |    PROD(P,ID) PROD(P, ID)  |  Produce ID "ID" according to predicate  |  PROD(1s, |
   |              | predicate P.  P may be a time period (1 second, |   EDD1)   |
   |              |  period (1 second,  or 1s) or  |           |
     |                  | an expression (EDD1 > 10). |           |
     +------------------+-------------------------------+-----------+
   +--------------+---------------------------------------+-----------+
   |   RPT(ID)    |   A report instance containing data   | RPT(EDD1) |
   |              |         data              named ID. "ID".              |           |
     +------------------+-------------------------------+-----------+
   +--------------+---------------------------------------+-----------+

                           Table 1: Terminology

   These notations do not imply any implementation approach.  They only
   provide a succinct syntax for expressing the data flows in the use
   case diagrams in the remainder of this section.

10.2.  Serialized Management

   This nominal configuration shows a single DM interacting with
   multiple DAs.  The control flows flow for this scenario are is outlined in
   Figure 4.

         +-----------+           +---------+           +---------+
         |   DTNMA   |           |  DTNMA  |           |  DTNMA  |
         | Manager A |           | Agent A |           | Agent B |
         +----+------+           +----+----+           +----+----+
             |                       |                     |
             |-----PROD(1s, EDD1)--->|                     | (1)
             |----------------------------PROD(1s, EDD1)-->|
             |                       |                     |
             |                       |                     |
             |<-------RPT(EDD1)------|                     | (2)
             |<----------------------------RPT(EDD1)-------|
             |                       |                     |
             |                       |                     |
             |<-------RPT(EDD1)------|                     |
             |<----------------------------RPT(EDD1)-------|
             |                       |                     |
             |                       |                     |
             |<-------RPT(EDD1)------|                     |
             |<----------------------------RPT(EDD1)-------|
             |                       |                     |

                Figure 4: Serialized Management Control Flow

   In a serialized management scenario, a single DM interacts with
   multiple DAs.

   In this figure, DM A sends a policy to DAs A and B to report the
   value of an EDD (EDD1) every second (step 1).  Each DA receives this
   policy and configures their respective autonomy engines for this
   production.  Thereafter (step 2), each DA produces a report
   containing data element EDD1; each such report is then sent back to
   the DM.

   This behavior continues without any additional communications from
   the DM.

10.3.  Intermittent Connectivity

   Building on the nominal configuration discussed in Section 10.2, this
   scenario shows a challenged network in which connectivity between DA
   B and the DM is temporarily lost.  Control flows  The control flow for this case are is
   outlined in Figure 5.

         +-----------+           +---------+           +---------+
         |   DTNMA   |           |  DTNMA  |           |  DTNMA  |
         | Manager A |           | Agent A |           | Agent B |
         +----+------+           +----+----+           +----+----+
             |                       |                     |
             |-----PROD(1s, EDD1)--->|                     | (1)
             |----------------------------PROD(1s, EDD1)-->|
             |                       |                     |
             |                       |                     |
             |<-------RPT(EDD1)------|                     | (2)
             |<----------------------------RPT(EDD1)-------|
             |                       |                     |
             |                       |                     |
             |<-------RPT(EDD1)------|                     |
             |<----------------------------RPT(EDD1)-------|
             |                       |                     |
             |                       |                     |
             |<-------RPT(EDD1)------|                     |
             |                       |            RPT(EDD1)| (3)
             |                       |                     |
             |                       |                     |
             |<-------RPT(EDD1)------|                     |
             |                       |            RPT(EDD1)| (4)
             |                       |                     |
             |                       |                     |
             |<-------RPT(EDD1)------|                     |
             |<----------------RPT(EDD1), RPT(EDD1)--------| (5)
             |                       |                     |

                Figure 5: Challenged Management Control Flow

   In a challenged network, DAs store reports, pending a transmit
   opportunity.

   In this figure, DM A sends a policy to DAs A and B to produce an EDD
   (EDD1) every second (step 1).  Each DA receives this policy and
   configures their respective autonomy engines for this production.
   Produced reports are transmitted when there is connectivity between
   the DA and DM (step 2).

   At some point, DA B loses the ability to transmit in the network
   (steps 3 and 4).  During this time period, DA B continues to produce
   reports, but they are queued for transmission.  This queuing might be
   done by the DA itself or by a supporting transport such as BP.
   Eventually (and before the next scheduled production of EDD1), DA B
   is able to transmit in the network again (step 5), and all queued
   reports are sent at that time.  DA A maintains connectivity with the
   DM during steps 3-5 and continues to send reports as they are
   generated.

10.4.  Open-Loop Reporting

   This scenario illustrates the DTNMA open-loop control paradigm, where
   DAs manage themselves in accordance with policies provided by DMs and
   provide reports to DMs based on these policies.

   The control flow shown in Figure 6 includes an example of data
   fusion, where multiple policies configured by a DM result in a single
   report from a DA.

         +-----------+           +---------+           +---------+
         |   DTNMA   |           |  DTNMA  |           |  DTNMA  |
         | Manager A |           | Agent A |           | Agent B |
         +----+------+           +----+----+           +----+----+
             |                       |                     |
             |-----PROD(1s, EDD1)--->|                     | (1)
             |----------------------------PROD(1s, EDD1)-->|
             |                       |                     |
             |                       |                     |
             |<-------RPT(EDD1)------|                     | (2)
             |<----------------------------RPT(EDD1)-------|
             |                       |                     |
             |                       |                     |
             |----------------------------PROD(1s, EDD2)-->| (3)
             |                       |                     |
             |                       |                     |
             |<-------RPT(EDD1)------|                     |
             |<--------------------------RPT(EDD1,EDD2)----|
             |<-------------------------RPT(EDD1, EDD2)----| (4)
             |                       |                     |
             |                       |                     |
             |<-------RPT(EDD1)------|                     |
             |<--------------------------RPT(EDD1,EDD2)----|
             |<-------------------------RPT(EDD1, EDD2)----|
             |                       |                     |

               Figure 6: Consolidated Management Control Flow

   A many-to-one mapping between management policy and device state
   reporting is supported by the DTNMA.

   In this figure, DM A sends a policy statement in the form of a rule
   to DAs A and B, which instructs the DAs to produce a report for EDD1
   every second (step 1).  Each DA receives this policy, which is stored
   in its respective Rule Database, rule database, and configures its autonomy engine.
   Reports are transmitted by each DA when produced (step 2).

   At a later time, DM A sends an additional policy to DA B, requesting
   the production of a report for EDD2 every second (step 3).  This
   policy is added to DA B's Rule Database. rule database.

   Following this policy update, DA A will continue to produce EDD1, and
   DA B will produce both EDD1 and EDD2 (step 4).  However, DA B may
   provide these values to the DM in a single report rather than as two
   independent reports.  In this way, there is no direct mapping between
   the single consolidated report reports sent by DA B (step 4) (from step 4 onwards) and the
   two different policies sent to DA B that caused that report to be
   generated (steps 1 and 3). 3) that produce the
   information included in those consolidated reports.

10.5.  Multiple Administrative Domains

   The managed applications on a DA may be controlled by different
   administrative entities in a network.  The DTNMA allows DAs to
   communicate with multiple DMs in the network, such as in cases where
   there is one DM per administrative domain.

   Whenever a DM sends a policy expression to a DA, that policy
   expression may be associated with authorization information.  One
   method of representing this is an ACL.

      |

   The use of an ACL in this use case does not imply that the
      | DTNMA
   requires ACLs to annotate policy expressions.  ACLs and
      | their
   representation in this context are for example purposes
      | only.

   The ability of one DM to access the results of policy expressions
   configured by some other DM will be limited to the authorization
   annotations of those policy expressions.

   An example of multi-manager authorization is illustrated in Figure 7.

   +-----------+               +---------+                 +-----------+
   |   DTNMA   |               |  DTNMA  |                 |   DTNMA   |
   | Manager A |               | Agent A |                 | Manager B |
   +-----+-----+               +----+----+                 +-----+-----+
       |                          |                            |
        |---DEF(ACL1,V1,EDD1*2)--->|<---DEF(ACL2,
       |--DEF(ACL1, V1, EDD1*2)-->|<---DEF(ACL2, V2, EDD2*2)---| (1)
       |                          |                            |
       |---PROD(1s, V1)---------->|<---PROD(1s, V2)------------| (2)
       |                          |                            |
       |<--------RPT(V1)----------|                            | (3)
       |                          |--------RPT(V2)------------>|
       |<--------RPT(V1)----------|                            |
       |                          |--------RPT(V2)------------>|
       |                          |                            |
       |                          |<---PROD(1s, V1)------------| (4)
       |                          |                            |
       |                          |---ERR(V1 not permitted)--->|
       |                          |                            |
        |--DEF(NULL,V3,EDD3*3)---->|
       |--DEF(NULL, V3, EDD3*3)-->|                            | (5)
       |                          |                            |
       |---PROD(1s, V3)---------->|                            | (6)
       |                          |                            |
       |                          |<----PROD(1s, V3)-----------|
       |                          |                            |
       |<--------RPT(V3)----------|--------RPT(V3)------------>| (7)
       |<--------RPT(V1)----------|                            |
       |                          |--------RPT(V2)------------>|
       |<-------RPT(V3)-----------|--------RPT(V3)------------>|
       |<-------RPT(V1)-----------|                            |
       |                          |--------RPT(V2)------------>|

               Figure 7: Multiplexed Management Control Flow

   Multiple DMs may interface with a single DA, particularly in complex
   networks.

   In this figure, both DM A and DM B send policies to DA A (step 1).
   DM A defines a variable (V1) whose value is given by the mathematical
   expression (EDD1 * 2) and is associated with an ACL (ACL1) that
   restricts access to V1 to DM A only.  Similarly, DM B defines a
   variable (V2) whose value is given by the mathematical expression
   (EDD2 * 2) and is associated with an ACL (ACL2) that restricts access
   to V2 to DM B only.

   Both DM A and DM B also send policies to DA A to report on the values
   of their variables at 1-second intervals (step 2).  Since DM A can
   access V1 and DM B can access V2, there is no authorization issue
   with these policies, and they are both accepted by the autonomy
   engine on DA A.  DA A produces reports as expected, sending them to
   their respective managers (step 3).

   Later (step 4), DM B attempts to configure DA A to also report to it
   the value of V1.  Since DM B does not have authorization to view this
   variable, DA A does not include this in the configuration of its
   autonomy engine; instead, some indication of a permission error is
   included in any regular reporting back to DM B.

   DM A also sends a policy to DA A (step 5) that defines a variable
   (V3) whose value is given by the mathematical expression (EDD3 * 3)
   and is not associated with an ACL, indicating that any DM can access
   V3.  In this instance, both DM A and DM B can then send policies to
   DA A to report the value of V3 (step 6).  Since there is no
   authorization restriction on V3, these policies are accepted by the
   autonomy engine on DA A, and reports are sent to both DM A and DM B
   over time (step 7).

10.6.  Cascading Management

   There are times when a single network device may serve as both a DM
   for other DAs in the network and, itself, as a device managed by
   someone else.  This may be the case on nodes serving as gateways or
   proxies.  The DTNMA accommodates this case by allowing a single
   device to run both a DA and a DM.

   An example of this configuration is illustrated in Figure 8.

                  ---------------------------------------
                  |                Node B               |
                  |                                     |
   +-----------+  |   +-----------+       +---------+   |    +---------+
   |   DTNMA   |  |   |   DTNMA   |       |  DTNMA  |   |    |  DTNMA  |
   | Manager A |  |   | Manager B |       | Agent B |   |    | Agent C |
   +---+-------+  |   +-----+-----+       +----+----+   |    +----+----+
       |          |         |                  |        |         |
       |--------------DEF(NULL,V0,EDD1+EDD2)-->|
       |----------DEF(NULL, V0, EDD1 + EDD2)-->|        |         | (1)
       |--------------PROD(1s,V0)------------->|
       |-------------PROD(1s, V0)------------->|        |         |
       |          |         |                  |        |         |
       |          |         |--PROD(1s,EDD1)-->|         |-PROD(1s, EDD1)-->|        |         | (2)
       |          |         |---------------------PROD(1s,EDD2)-->|         |--------------------PROD(1s, EDD2)-->| (2)
       |          |         |                  |        |         |
       |          |         |                  |        |         |
       |          |         |<----RPT(EDD1)----|        |         | (3)
       |          |         |<--------------------RPT(EDD2)-------| (3)
       |          |         |                  |        |         |
       |<-------------RPT(V0)------------------|        |         | (4)
       |          |         |                  |        |         |
       |          |         |                  |        |         |
                  |                                     |
                  |                                     |
                  ---------------------------------------

                Figure 8: Cascading Management Control Flow

   A device can operate as both a DM and a DA.

   In this example, we presume that DA B is able to sample a given EDD
   (EDD1) and that DA C is able to sample a different EDD (EDD2).  Node
   B houses DM B (which controls DA C) and DA B (which is controlled by
   DM A).  DM A must periodically receive some new value that is
   calculated as a function of both EDD1 and EDD2.

   First, DM A sends a policy to DA B to define a variable (V0) whose
   value is given by the mathematical expression (EDD1 + EDD2) without a
   restricting ACL.  Further, DM A sends a policy to DA B to report on
   the value of V0 every second (step 1).

   DA B needs the ability to monitor both EDD1 and EDD2. EDD2 to produce V0.
   DA B is able to sample EDD1, so DM B sends a policy to DA B to report
   on the value of EDD1.  However, the only way to receive EDD2 values
   is to have them reported back to Node B by DA C and included in the
   Node B runtime datastores.  Therefore, DM B also sends a policy to DA
   C to report on the value of EDD2 (step 2).

   DA B receives the policy in its autonomy engine and produces reports
   on the value of EDD2 every second.  Similarly, DA C receives the
   policy in its autonomy engine and produces reports on the value of
   EDD2 every second (step 3).

   DA B may locally sample EDD1 and EDD2 and uses that to compute values
   of V0 and report on those values at regular intervals to DM A (step
   4).

   While a trivial example, the mechanism of associating fusion with the
   Agent
   DA function rather than the Manager DM function scales with fusion
   complexity.  Within the DTNMA, DAs and DMs are not required to be
   separate software implementations.  There may be a single software
   application running on Node B implementing both DM B and DA B roles.

11.  IANA Considerations

   This document has no IANA actions.

12.  Security Considerations

   Security within a DTNMA exists in at least the following two layers:
   security in the data model and security in the messaging and encoding
   of the data model.

   Data model security refers to the validity and accessibility of data
   elements.  For example, a data element might be available to certain
   DAs or DMs in a system, whereas the same data element may be hidden
   from other DAs or DMs.  Both verification and authorization
   mechanisms at DAs and DMs are important to achieve this type of
   security.

      |  NOTE: One way to provide finer-grained application security is
      |  through the use of ACLs that would be defined as part of the
      |  configuration of DAs and DMs.  It is expected that many common
      |  data model tools provide mechanisms for the definition of ACLs
      |  and best practices for their operational use.

   The exchange of information between and amongst DAs and DMs in the
   DTNMA is expected to be accomplished through some secured messaging
   transport.

13.  Informative References

   [ASN.1]    International Organization for Standardization,    ITU-T, "Information processing systems technology - Open Systems
              Interconnection - Specification of Abstract Syntax Notation
              One (ASN.1)", International Standard 8824,
              December 1987. (ASN.1): Specification of basic notation", ITU-T
              Recommendation X.680, ISO/IEC 8824-1:2021, February 2021,
              <https://www.itu.int/rec/T-REC-X.680>.

   [CORE-COMI]
              Veillette, M., Ed., van der Stok, P., Ed., Pelov, A., Ed.,
              Bierman, A., and C. Bormann, Ed., "CoAP Management
              Interface (CORECONF)", Work in Progress, Internet-Draft,
              draft-ietf-core-comi-18, 23 July
              draft-ietf-core-comi-19, 3 November 2024,
              <https://datatracker.ietf.org/doc/html/draft-ietf-core-
              comi-18>.
              comi-19>.

   [DART]     Tropf, B. T., Haque, M., Behrooz, N., and C. Krupiarz,
              "The DART Autonomy System", DOI 10.1109/SMC-
              IT56444.2023.00020, August 2023,
              <https://ieeexplore.ieee.org/abstract/document/10207457>.

   [gNMI]     OpenConfig,     Borman, P., Hines, M., Lebsack, C., Morrow, C., Shaikh,
              A., Shakir, R., Li, W., and D. Loher, "gRPC Network
              Management Interface (gNMI)", Version 10.0, May 2023,
              <https://www.openconfig.net/docs/gnmi/gnmi-
              specification/>.

   [gRPC]     gRPC Authors, "gRPC Documentation", 2024,
              <https://grpc.io/docs/>.

   [IPMI]     Intel, Hewlett-Packard, NEC, and Dell, "Intelligent
              Platform Management Interface Specification, Second
              Generation", Version 2.0, October 2013,
              <https://www.intel.la/content/dam/www/public/us/en/
              documents/specification-updates/ipmi-intelligent-platform-
              mgt-interface-spec-2nd-gen-v2-0-spec-update.pdf>.

   [NEW-HORIZONS]
              Moore, R. C., "Autonomous safeing and fault protection for
              the New Horizons mission to Pluto", Acta Astronautica,
              Volume 61, Issues 1-6, June-August 2007, Pages 398-405,
              DOI 10.1016/j.actaastro.2007.01.009, August 2007,
              <https://www.sciencedirect.com/science/article/pii/
              S0094576507000604>.

   [PROTOCOL-BUFFERS]
              Stuart, S. and R. Fernando, "Encoding rules and MIME type
              for Protocol Buffers", Work in Progress, Internet-Draft,
              draft-rfernando-protocol-buffers-00, 8 October 2012,
              <https://datatracker.ietf.org/doc/html/draft-rfernando-
              protocol-buffers-00>.

   [RFC2578]  McCloghrie, K., Ed., Perkins, D., Ed., and J.
              Schoenwaelder, Ed., "Structure of Management Information
              Version 2 (SMIv2)", STD 58, RFC 2578,
              DOI 10.17487/RFC2578, April 1999,
              <https://www.rfc-editor.org/info/rfc2578>.

   [RFC2982]  Kavasseri, R., Ed., "Distributed Management Expression
              MIB", RFC 2982, DOI 10.17487/RFC2982, October 2000,
              <https://www.rfc-editor.org/info/rfc2982>.

   [RFC3165]  Levi, D. and J. Schoenwaelder, "Definitions of Managed
              Objects for the Delegation of Management Scripts",
              RFC 3165, DOI 10.17487/RFC3165, August 2001,
              <https://www.rfc-editor.org/info/rfc3165>.

   [RFC3410]  Case, J., Mundy, R., Partain, D., and B. Stewart,
              "Introduction and Applicability Statements for Internet-
              Standard Management Framework", RFC 3410,
              DOI 10.17487/RFC3410, December 2002,
              <https://www.rfc-editor.org/info/rfc3410>.

   [RFC3411]  Harrington, D., Presuhn, R., and B. Wijnen, "An
              Architecture for Describing Simple Network Management
              Protocol (SNMP) Management Frameworks", STD 62, RFC 3411,
              DOI 10.17487/RFC3411, December 2002,
              <https://www.rfc-editor.org/info/rfc3411>.

   [RFC3414]  Blumenthal, U. and B. Wijnen, "User-based Security Model
              (USM) for version 3 of the Simple Network Management
              Protocol (SNMPv3)", STD 62, RFC 3414,
              DOI 10.17487/RFC3414, December 2002,
              <https://www.rfc-editor.org/info/rfc3414>.

   [RFC3416]  Presuhn, R., Ed., "Version 2 of the Protocol Operations
              for the Simple Network Management Protocol (SNMP)",
              STD 62, RFC 3416, DOI 10.17487/RFC3416, December 2002,
              <https://www.rfc-editor.org/info/rfc3416>.

   [RFC3417]  Presuhn, R., Ed., "Transport Mappings for the Simple
              Network Management Protocol (SNMP)", STD 62, RFC 3417,
              DOI 10.17487/RFC3417, December 2002,
              <https://www.rfc-editor.org/info/rfc3417>.

   [RFC3418]  Presuhn, R., Ed., "Management Information Base (MIB) for
              the Simple Network Management Protocol (SNMP)", STD 62,
              RFC 3418, DOI 10.17487/RFC3418, December 2002,
              <https://www.rfc-editor.org/info/rfc3418>.

   [RFC4838]  Cerf, V., Burleigh, S., Hooke, A., Torgerson, L., Durst,
              R., Scott, K., Fall, K., and H. Weiss, "Delay-Tolerant
              Networking Architecture", RFC 4838, DOI 10.17487/RFC4838,
              April 2007, <https://www.rfc-editor.org/info/rfc4838>.

   [RFC4949]  Shirey, R., "Internet Security Glossary, Version 2",
              FYI 36, RFC 4949, DOI 10.17487/RFC4949, August 2007,
              <https://www.rfc-editor.org/info/rfc4949>.

   [RFC5591]  Harrington, D. and W. Hardaker, "Transport Security Model
              for the Simple Network Management Protocol (SNMP)",
              STD 78, RFC 5591, DOI 10.17487/RFC5591, June 2009,
              <https://www.rfc-editor.org/info/rfc5591>.

   [RFC5592]  Harrington, D., Salowey, J., and W. Hardaker, "Secure
              Shell Transport Model for the Simple Network Management
              Protocol (SNMP)", RFC 5592, DOI 10.17487/RFC5592, June
              2009, <https://www.rfc-editor.org/info/rfc5592>.

   [RFC5652]  Housley, R., "Cryptographic Message Syntax (CMS)", STD 70,
              RFC 5652, DOI 10.17487/RFC5652, September 2009,
              <https://www.rfc-editor.org/info/rfc5652>.

   [RFC6241]  Enns, R., Ed., Bjorklund, M., Ed., Schoenwaelder, J., Ed.,
              and A. Bierman, Ed., "Network Configuration Protocol
              (NETCONF)", RFC 6241, DOI 10.17487/RFC6241, June 2011,
              <https://www.rfc-editor.org/info/rfc6241>.

   [RFC6242]  Wasserman, M., "Using the NETCONF Protocol over Secure
              Shell (SSH)", RFC 6242, DOI 10.17487/RFC6242, June 2011,
              <https://www.rfc-editor.org/info/rfc6242>.

   [RFC6353]  Hardaker, W., "Transport Layer Security (TLS) Transport
              Model for the Simple Network Management Protocol (SNMP)",
              STD 78, RFC 6353, DOI 10.17487/RFC6353, July 2011,
              <https://www.rfc-editor.org/info/rfc6353>.

   [RFC6991]  Schoenwaelder, J., Ed., "Common YANG Data Types",
              RFC 6991, DOI 10.17487/RFC6991, July 2013,
              <https://www.rfc-editor.org/info/rfc6991>.

   [RFC7228]  Bormann, C., Ersue, M., and A. Keranen, "Terminology for
              Constrained-Node Networks", RFC 7228,
              DOI 10.17487/RFC7228, May 2014,
              <https://www.rfc-editor.org/info/rfc7228>.

   [RFC7252]  Shelby, Z., Hartke, K., and C. Bormann, "The Constrained
              Application Protocol (CoAP)", RFC 7252,
              DOI 10.17487/RFC7252, June 2014,
              <https://www.rfc-editor.org/info/rfc7252>.

   [RFC7575]  Behringer, M., Pritikin, M., Bjarnason, S., Clemm, A.,
              Carpenter, B., Jiang, S., and L. Ciavaglia, "Autonomic
              Networking: Definitions and Design Goals", RFC 7575,
              DOI 10.17487/RFC7575, June 2015,
              <https://www.rfc-editor.org/info/rfc7575>.

   [RFC7589]  Badra, M., Luchuk, A., and J. Schoenwaelder, "Using the
              NETCONF Protocol over Transport Layer Security (TLS) with
              Mutual X.509 Authentication", RFC 7589,
              DOI 10.17487/RFC7589, June 2015,
              <https://www.rfc-editor.org/info/rfc7589>.

   [RFC7950]  Bjorklund, M., Ed., "The YANG 1.1 Data Modeling Language",
              RFC 7950, DOI 10.17487/RFC7950, August 2016,
              <https://www.rfc-editor.org/info/rfc7950>.

   [RFC7951]  Lhotka, L., "JSON Encoding of Data Modeled with YANG",
              RFC 7951, DOI 10.17487/RFC7951, August 2016,
              <https://www.rfc-editor.org/info/rfc7951>.

   [RFC8040]  Bierman, A., Bjorklund, M., and K. Watsen, "RESTCONF
              Protocol", RFC 8040, DOI 10.17487/RFC8040, January 2017,
              <https://www.rfc-editor.org/info/rfc8040>.

   [RFC8199]  Bogdanovic, D., Claise, B., and C. Moberg, "YANG Module
              Classification", RFC 8199, DOI 10.17487/RFC8199, July
              2017, <https://www.rfc-editor.org/info/rfc8199>.

   [RFC8294]  Liu, X., Qu, Y., Lindem, A., Hopps, C., and L. Berger,
              "Common YANG Data Types for the Routing Area", RFC 8294,
              DOI 10.17487/RFC8294, December 2017,
              <https://www.rfc-editor.org/info/rfc8294>.

   [RFC8341]  Bierman, A. and M. Bjorklund, "Network Configuration
              Access Control Model", STD 91, RFC 8341,
              DOI 10.17487/RFC8341, March 2018,
              <https://www.rfc-editor.org/info/rfc8341>.

   [RFC8342]  Bjorklund, M., Schoenwaelder, J., Shafer, P., Watsen, K.,
              and R. Wilton, "Network Management Datastore Architecture
              (NMDA)", RFC 8342, DOI 10.17487/RFC8342, March 2018,
              <https://www.rfc-editor.org/info/rfc8342>.

   [RFC8368]  Eckert, T., Ed. and M. Behringer, "Using an Autonomic
              Control Plane for Stable Connectivity of Network
              Operations, Administration, and Maintenance (OAM)",
              RFC 8368, DOI 10.17487/RFC8368, May 2018,
              <https://www.rfc-editor.org/info/rfc8368>.

   [RFC8639]  Voit, E., Clemm, A., Gonzalez Prieto, A., Nilsen-Nygaard,
              E., and A. Tripathy, "Subscription to YANG Notifications",
              RFC 8639, DOI 10.17487/RFC8639, September 2019,
              <https://www.rfc-editor.org/info/rfc8639>.

   [RFC8641]  Clemm, A. and E. Voit, "Subscription to YANG Notifications
              for Datastore Updates", RFC 8641, DOI 10.17487/RFC8641,
              September 2019, <https://www.rfc-editor.org/info/rfc8641>.

   [RFC8990]  Bormann, C., Carpenter, B., Ed., and B. Liu, Ed., "GeneRic
              Autonomic Signaling Protocol (GRASP)", RFC 8990,
              DOI 10.17487/RFC8990, May 2021,
              <https://www.rfc-editor.org/info/rfc8990>.

   [RFC8993]  Behringer, M., Ed., Carpenter, B., Eckert, T., Ciavaglia,
              L., and J. Nobre, "A Reference Model for Autonomic
              Networking", RFC 8993, DOI 10.17487/RFC8993, May 2021,
              <https://www.rfc-editor.org/info/rfc8993>.

   [RFC9113]  Thomson, M., Ed. and C. Benfield, Ed., "HTTP/2", RFC 9113,
              DOI 10.17487/RFC9113, June 2022,
              <https://www.rfc-editor.org/info/rfc9113>.

   [RFC9171]  Burleigh, S., Fall, K., and E. Birrane, III, "Bundle
              Protocol Version 7", RFC 9171, DOI 10.17487/RFC9171,
              January 2022, <https://www.rfc-editor.org/info/rfc9171>.

   [RFC9172]  Birrane, III, E. and K. McKeever, "Bundle Protocol
              Security (BPSec)", RFC 9172, DOI 10.17487/RFC9172, January
              2022, <https://www.rfc-editor.org/info/rfc9172>.

   [RFC9254]  Veillette, M., Ed., Petrov, I., Ed., Pelov, A., Bormann,
              C., and M. Richardson, "Encoding of Data Modeled with YANG
              in the Concise Binary Object Representation (CBOR)",
              RFC 9254, DOI 10.17487/RFC9254, July 2022,
              <https://www.rfc-editor.org/info/rfc9254>.

   [RFC9595]  Veillette, M., Ed., Pelov, A., Ed., Petrov, I., Ed.,
              Bormann, C., and M. Richardson, "YANG Schema Item
              iDentifier (YANG SID)", RFC 9595, DOI 10.17487/RFC9595,
              July 2024, <https://www.rfc-editor.org/info/rfc9595>.

   [xml-infoset]
              Cowan, J., Ed. and R. Tobin, Ed., "XML Information Set
              (Second Edition)", W3C Recommendation REC-xml-infoset-
              20040204, February 2004,
              <https://www.w3.org/TR/2004/REC-xml-infoset-20040204/>.

   [XPath]    Clark,    Robie, J., Ed. Ed., Dyck, M., Ed., and S. DeRose, J. Spiegel, Ed., "XML
              Path Language (XPath) Version 1.0", W3C Recommendation REC-xpath-
              19991116, November 1999,
              <https://www.w3.org/TR/1999/REC-xpath-19991116>. 3.1", March 2017,
              <https://www.w3.org/TR/2017/REC-xpath-31-20170321/>.
              Latest version available at
              <https://www.w3.org/TR/xpath-31/>.

Acknowledgements

   Brian Sipos of the Johns Hopkins University Applied Physics
   Laboratory (JHU/APL) provided excellent technical review of the DTNMA
   concepts presented in this document and additional information
   related to existing network management techniques.

Authors' Addresses

   Edward J. Birrane, III
   The Johns Hopkins University Applied Physics Laboratory
   Email: Edward.Birrane@jhuapl.edu

   Sarah E. Heiner
   The Johns Hopkins University Applied Physics Laboratory
   Email: Sarah.Heiner@jhuapl.edu

   Emery Annis
   The Johns Hopkins University Applied Physics Laboratory
   Email: Emery.Annis@jhuapl.edu