This paper presents an initial investigation into the combination of integrated sensing and communication (ISAC) and massive communication, both of which are largely regarded as key scenarios in sixth-generation (6G) wireless networks. Specifically, we consider a cell-free network comprising a large number of users, multiple targets, and distributed base stations (BSs). In each time slot, a random subset of users becomes active, transmitting pilot signals that can be scattered by the targets before reaching the BSs. Unlike conventional massive random access schemes, where the primary objectives are device activity detection and channel estimation, our framework also enables target localization by leveraging the multipath propagation effects introduced by the targets. However, due to the intricate dependency between user channels and target locations, characterizing the posterior distribution required for minimum mean-square error (MMSE) estimation presents significant computational challenges. To handle this problem, we propose a hybrid message passing-based framework that incorporates multiple approximations to mitigate computational complexity. Numerical results demonstrate that the proposed approach achieves high-accuracy device activity detection, channel estimation, and target localization simultaneously, validating the feasibility of embedding localization functionality into massive communication systems for future 6G networks.
翻译:本文对集成感知与通信(ISAC)和大规模通信的结合进行了初步研究,这两者均被广泛视为第六代(6G)无线网络的关键场景。具体而言,我们考虑一个包含大量用户、多个目标和分布式基站(BSs)的无蜂窝网络。在每个时隙中,随机用户子集变为活跃状态,发送的导频信号在到达基站前可能被目标散射。与以设备活动性检测和信道估计为主要目标的传统大规模随机接入方案不同,我们的框架还通过利用目标引入的多径传播效应实现了目标定位。然而,由于用户信道与目标位置之间存在复杂的依赖关系,刻画最小均方误差(MMSE)估计所需的后验分布带来了显著的计算挑战。为解决此问题,我们提出了一种基于混合消息传递的框架,该框架融合了多种近似以降低计算复杂度。数值结果表明,所提方法能够同时实现高精度的设备活动性检测、信道估计和目标定位,验证了在未来6G网络中为大规模通信系统嵌入定位功能的可行性。