用于综合传感与通信的双分散多径信道上的多用户关联与定位

Haiying Zhang;Shuyi Chen;Weixiao Meng;Jinhong Yuan;Cheng Li
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摘要

支持多用户通信和定位是综合传感与通信(ISAC)的典型应用场景。然而,由于多径和多用户引起的多回波问题,很难确定用户设备(UE)与这些回波之间的关系。因此,在雷达接收机上应用传统的估计算法,不可避免地会因回波和 UE 之间的不匹配而导致通信和定位性能减弱。本文以在双色散多径信道下实现多用户关联和定位为目标,基于正交延迟-多普勒分复用(ODDM)原理构建了一种 ISAC 统一波形,并开发了一种离网集群稀疏贝叶斯学习估计(OG-CSBL)算法。我们尤其关注单静态设置,即基站(BS)希望在感知多用户位置的同时与多用户通信。我们利用高分辨率测距轮廓(HRRP)来描述 UE 的物理特征,并通过利用固有的集群结构来建立与其回声的关联。为了估计参数,我们设计了一种混合的狄利克特过程(DP)-高斯分层先验分布,并提出了一种变异贝叶斯推理(VBI)-EM 策略。此外,我们还开发了一种回音回溯识别方案,以促进 UE 的精确定位。仿真结果表明,在复杂的多用户共存场景中,所提出的方案实现了卓越的 NMSE 性能,提供了米级定位精度,并获得了更好的误码率性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiuser Association and Localization Over Doubly Dispersive Multipath Channels for Integrated Sensing and Communications
Supporting multiuser communication and localization is a typical scenario in Integrated sensing and communications (ISAC). However, the problem of multi-echo induced by multipath and multiuser makes it hard to determine the relationship between user equipments (UEs) and these echoes. Thus, applying traditional estimation algorithms at the radar receiver inevitably leads to weak communication and localization performances due to the mismatch between echoes and UEs. In this paper, aiming to achieve multiuser association and localization under doubly dispersive multipath channels, we construct an ISAC unified waveform based on the orthogonal delay-Doppler division multiplexing (ODDM) principle and develop an off-grid cluster sparse Bayesian learning estimation (OG-CSBL) algorithm. Particularly, we focus on the mono-static setup, where the base station (BS) expects to communicate with multiuser while sensing their locations. We utilize the high-resolution range profile (HRRP) to characterize the physical features of UEs and establish associations with their echoes by exploiting the inherent cluster structure. To estimate parameters, we design a hybrid Dirichlet process (DP)-Gaussian hierarchical prior distribution and propose a variational Bayesian inference (VBI)-EM strategy. Additionally, we develop a backtrack echo identification scheme to facilitate precise UE localization. Simulation results demonstrate that the proposed scheme achieves superior NMSE performance, offers meter-level localization accuracy, and obtains better BER performance in the complex multiuser coexistence scenario.
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