Channel Tracking and Prediction for IRS-aided Wireless Communications
Yi Wei, Ming-Min Zhao, An Liu, and Min-Jian Zhao

TL;DR
This paper introduces a low-overhead, two-stage channel tracking and prediction scheme for IRS-aided wireless systems with time-varying channels, utilizing Kalman filters and neural networks to enhance channel estimation accuracy.
Contribution
It proposes a novel two-stage transmission protocol and a 2SCTP scheme for efficient channel tracking and prediction in dynamic IRS-aided systems, reducing training overhead.
Findings
Kalman filter-based algorithm effectively tracks static IRS-AP channels.
LSTM neural network accurately predicts channel variations.
Generalized Kalman filter handles all time-varying channels with approximations.
Abstract
For intelligent reflecting surface (IRS)-aided wireless communications, channel estimation is essential and usually requires excessive channel training overhead when the number of IRS reflecting elements is large. The acquisition of accurate channel state information (CSI) becomes more challenging when the channel is not quasi-static due to the mobility of the transmitter and/or receiver. In this work, we study an IRS-aided wireless communication system with a time-varying channel model and propose an innovative two-stage transmission protocol. In the first stage, we send pilot symbols and track the direct/reflected channels based on the received signal, and then data signals are transmitted. In the second stage, instead of sending pilot symbols first, we directly predict the direct/reflected channels and all the time slots are used for data transmission. Based on the proposed…
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Taxonomy
TopicsAdvanced Wireless Communication Technologies · Underwater Vehicles and Communication Systems · Indoor and Outdoor Localization Technologies
