Conventional mobile networks, including both localized cell-centric and cooperative cell-free networks (CCN/CFN), are built upon rigid network topologies. However, neither architecture is adequate to flexibly support distributed integrated sensing and communication (ISAC) services, due to the increasing difficulty of aligning spatiotemporally distributed heterogeneous service demands with available radio resources. In this paper, we propose an elastic network topology (ENT) for distributed ISAC service provisioning, where multiple co-existing localized CCNs can be dynamically aggregated into CFNs with expanded boundaries for federated network operation. This topology elastically orchestrates localized CCN and federated CFN boundaries to balance signaling overhead and distributed resource utilization, thereby enabling efficient ISAC service provisioning. A two-phase operation protocol is then developed. In Phase I, each CCN autonomously classifies ISAC services as either local or federated and partitions its resources into dedicated and shared segments. In Phase II, each CCN employs its dedicated resources for local ISAC services, while the aggregated CFN consolidates shared resources from its constituent CCNs to cooperatively deliver federated services. Furthermore, we design a utility-to-signaling ratio (USR) to quantify the tradeoff between sensing/communication utility and signaling overhead. Consequently, a USR maximization problem is formulated by jointly optimizing the network topology (i.e., service classification and CCN aggregation) and the allocation of dedicated and shared resources. However, this problem is challenging due to its distributed optimization nature and the absence of complete channel state information. To address this problem efficiently, we propose a multi-agent deep reinforcement learning (MADRL) framework with centralized training and decentralized execution.
翻译:传统移动网络,包括本地化小区中心网络与协作式无小区网络(CCN/CFN),均建立在固定网络拓扑之上。然而,由于时空分布的异构服务需求与可用无线资源之间日益难以匹配,上述两种架构均无法灵活支持分布式集成感知与通信(ISAC)服务。本文提出一种面向分布式ISAC服务提供的弹性网络拓扑(ENT),其中多个共存的本地化CCN可动态聚合成边界扩展的CFN,以实现联邦化网络运营。该拓扑通过弹性编排本地化CCN与联邦化CFN的边界,在信令开销与分布式资源利用率之间取得平衡,从而实现高效的ISAC服务提供。随后,我们设计了一个两阶段操作协议。在第一阶段,每个CCN自主将ISAC服务分类为本地型或联邦型,并将其资源划分为专用段与共享段。在第二阶段,每个CCN使用其专用资源处理本地ISAC服务,而聚合形成的CFN则整合来自各成员CCN的共享资源,以协作方式提供联邦型服务。此外,我们设计了效用-信令比(USR)指标来量化感知/通信效用与信令开销之间的权衡关系。基于此,通过联合优化网络拓扑(即服务分类与CCN聚合)以及专用/共享资源分配,构建了USR最大化问题。然而,该问题因其分布式优化特性及完整信道状态信息的缺失而具有挑战性。为有效求解此问题,我们提出了一种采用集中训练-分散执行模式的多智能体深度强化学习(MADRL)框架。