Capacity Optimization of Large Intelligent Surface With Hardware Impairment Based on Meta-Deep Learning

Yifan Mao, Xiaoyu Xiao, Zhirun Hu

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Abstract

This work proposes a sub-optimal method based on a two-layer structured meta-deep reinforcement learning (MDRL) approach to address the hardware impairment (HWI) optimization issue in large intelligent surface (LIS) systems. This method, designed for distributed LIS systems with reflection matrices, effectively enhances the system capacity and performance despite HWIs. Building upon existing techniques of dividing large-area LIS systems into multiple small-area subsystems, the simulated results demonstrate that sub-optimal LIS performance can be achieved with fewer samples in diverse dynamic wireless environments. This innovative approach enhances the adaptability of distributed LIS systems and offers an effective HWI management strategy, paving the way for future LIS system optimization.
Original languageEnglish
Pages (from-to)69359-69370
JournalIEEE Access
Volume12
Early online date15 May 2024
DOIs
Publication statusPublished - 23 May 2024

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