利用联合学习在基于 IRS 的无人机通信系统中进行信道跟踪

Itika Sharma, Sachin Kumar Gupta
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引用次数: 0

摘要

摘要 本文旨在通过在无人飞行器中加入智能反射面(IRS)进行信道跟踪,克服无人飞行器(UAV)通信的问题和局限性。由于 IRS 可改变传播环境,因此是与无人飞行器结合以提高无线网络安全性的理想选择。由于 IRS 技术能够主动配置无线环境,因此是未来通信系统的潜在技术。IRS 能够提供稳定的通信,并通过反射信号来创建虚拟 LoS 路由,从而服务于更大的覆盖范围。此外,我们还开发了一种基于联合学习的信道跟踪技术,利用联合学习来确定安全和预估成分。此外,为了进行信道跟踪,我们还开发了长短期记忆(LSTM)。由于 LSTM 能够理解数据时间步之间的长期联系,因此常用于学习、分析和分类顺序数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Channel tracking in IRS-based UAV communication systems using federated learning
Abstract This paper aims to overcome the problems and limitations of the communications of Unmanned Aerial Vehicles (UAV) by incorporating Intelligent Reflecting Surface (IRS) into UAV for channel tracking. Since IRS may change the propagation environment, is a desirable option for combining with UAV to improve wireless network security. Due to its capacity to proactively configure the wireless environment, IRS technology is a potential one for future communication systems. IRS is able to provide steady communications and serve a greater coverage area by reflecting signals to create virtual LoS routes. Moreover, we develop a federated learning-based channel tracking technique in which federated learning is used to determine the security and pre-estimation constituent. In addition, for channel tracking, Long Short-Term Memory (LSTM) is developed. Due to their ability to understand long-term connections between data time steps, LSTMs are frequently used to learn, analyze, and classify sequential data.
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