Integrated Sensing and Communication Receiver Design for OTFS-Based MIMO System: A Unified Variational Inference Framework

Nan Wu;Haoyang Li;Dongxuan He;Arumugam Nallanathan;Tony Q. S. Quek
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Abstract

This paper proposes a novel integrated sensing and communication (ISAC) receiver design framework for OTFS (orthogonal time frequency space)-based MIMO (multi-input-multi-output) systems from a unified perspective of variational inference. We first construct a factor graph representation for the OTFS-based MIMO system according to the factorization of the a posteriori probability (APP). This representation establishes a direct probabilistic link between sensing and communication, allowing both functionalities to benefit from their integration. On this basis, we develop a low computational complexity message passing algorithm by minimizing the variational free energy associated with the global APP. In particular, belief propagation, mean field, and expectation maximization algorithms for data detection, channel coefficient estimation, and kinematic parameter sensing are derived, respectively. To reduce the communication overhead for the implementation of ISAC algorithm, we propose a federated learning scheme for distributed kinematic parameter sensing. Specifically, by solving the sensing problem in different fashions, three federated learning modes are devised. Simulation results validate the superior performance of the proposed scheme.
基于otfs的MIMO系统集成传感与通信接收机设计:一个统一变分推理框架
从变分推理的统一角度,提出了一种基于正交时频空间(OTFS)的多输入多输出(MIMO)系统的ISAC接收机设计框架。我们首先根据后验概率(APP)的因式分解构造了基于otfs的MIMO系统的因子图表示。这种表示在传感和通信之间建立了直接的概率联系,允许两种功能从它们的集成中受益。在此基础上,我们通过最小化与全局APP相关的变分自由能,开发了一种计算复杂度较低的消息传递算法。特别是,分别推导了用于数据检测、信道系数估计和运动参数感知的信念传播、平均场和期望最大化算法。为了减少ISAC算法实现的通信开销,我们提出了一种分布式运动参数感知的联邦学习方案。具体来说,通过以不同的方式解决感知问题,设计了三种联邦学习模式。仿真结果验证了该方案的优越性能。
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