利用统计CSI的ris辅助联邦边缘学习

Heju Li, Rui Wang, Jun Wu, Wei Zhang, Ismael Soto
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引用次数: 0

摘要

联邦边缘学习(FEEL)作为一种新兴的分布式学习范式,在数据本地化的前提下,通过在边缘设备上进行协同训练,可以有效地解决物联网中的资源约束和隐私问题。然而,由于资源的稀缺和难以捉摸的通信衰落,模型损坏和信号偏差等问题将严重影响感知的收敛性能和学习精度。考虑到这一点,最近集成了可重构智能表面(RIS),通过自适应地重新配置信号传播环境来提高无线系统的通信质量。为了完全释放RIS的应用潜力,相移的配置至关重要,其中需要准确的信道状态信息(CSI)。不幸的是,准确的瞬时CSI是极具挑战性的估计。在本文中,我们专注于假设只有统计CSI已知的现实场景,这可以相对容易和准确地探索。另一方面,考虑到随机非视距信道导致的无线中断,我们严格推导了RIS启用FEEL框架关于中断概率的显式收敛上界。在收敛理论的基础上,通过共同优化带宽分配和RIS配置矩阵,进一步建立了统一的资源分配问题。大量的仿真结果表明,与基线解决方案相比,所提出的设计显著提高了学习性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RIS-Aided Federated Edge Learning Exploiting Statistical CSI
Federated edge learning (FEEL) as an emerging distributed learning paradigm can effectively resolve the resource constraints and privacy issues in the Internet of Things (IoT) by featuring collaborative training at the edge devices under the premise of data localization. Nevertheless, owing to the scarce resources and the inscrutable communication fading, issues such as model damage and signal deviation will critically diminish the convergence performance and learning accuracy of FEEL. With this in mind, reconfigurable intelligent surface (RIS) has recently been integrated to enhance the communication quality of wireless systems by adaptively reconfiguring the signal propagation environment. To utterly release the applied potency of RIS, the configuration of phase shifts is of paramount importance, where accurate channel state information (CSI) is required. Unfortunately, the accurate instantaneous CSI is extremely challenging to be estimated. In this paper, we focus on the realistic scenario assuming only statistical CSI is known, which can be comparatively easily and accurately explored. On the other hand, considering the wireless outage caused by the random non-line-of-sight channel, we rigorously derive an explicit convergence upper bound of the RIS enabled FEEL framework with respect to the outage probability. Based on the convergence theory, a unified resource allocation problem is further established by jointly optimizing bandwidth allocation, and the RIS configuration matrix. Extensive simulations are conducted to demonstrate that the proposed design dramatically promotes the learning performance compared against the baseline solutions.
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