Machine-Learning-Based Optimization for Multiple-IRS-Aided Communication System

Due to the benefits of the spectrum and energy efficiency, intelligent reflecting surfaces (IRSs) are regarded as a promising technology for future networks. In this work, we consider a single cellular network where multiple IRSs are deployed to assist the downlink transmissions from the base statio...

Full description

Bibliographic Details
Main Authors: Maha Fathy, Zesong Fei, Jing Guo, Mohamed Salah Abood
Format: Article
Language:English
Published: MDPI AG 2023-04-01
Series:Electronics
Subjects:
Online Access:https://www.mdpi.com/2079-9292/12/7/1703
_version_ 1797608120035311616
author Maha Fathy
Zesong Fei
Jing Guo
Mohamed Salah Abood
author_facet Maha Fathy
Zesong Fei
Jing Guo
Mohamed Salah Abood
author_sort Maha Fathy
collection DOAJ
description Due to the benefits of the spectrum and energy efficiency, intelligent reflecting surfaces (IRSs) are regarded as a promising technology for future networks. In this work, we consider a single cellular network where multiple IRSs are deployed to assist the downlink transmissions from the base station (BS) to multiple user equipment (UE). Hence, we aim to jointly optimize the configuration of the BS active beamforming and reflection beamforming of the IRSs that meet the UE’s QoS while allowing the lowest transmit power consumption at the BS. Although the conventional alternating approach is widely used to find converged solutions, its applicability is restricted by high complexity, which is more severe in a dynamic environment. Consequently, an alternative approach, i.e., machine learning (ML), is adopted to find the optimal solution with lower complexity. For the static UE scenario, we propose a low-complexity optimization algorithm based on the new generalized neural network (GRNN). Meanwhile, for the dynamic UE scenario, we propose a deep reinforcement learning (DRL)-based optimization algorithm. Specifically, a deep deterministic policy gradient (DDPG)-based algorithm is designed to address the GRNN algorithm’s restrictions and efficiently handle the dynamic UE scenario. Simulation results confirm that the proposed algorithms can achieve better power-saving performance and convergence with a noteworthy reduction in the computation time compared to the alternating optimization-based approaches. In addition, our results show that the total transmit power at the BS decreases with the increasing number of reflecting units at the IRSs.
first_indexed 2024-03-11T05:39:08Z
format Article
id doaj.art-b8f46892b3174252898ce249cf78cad7
institution Directory Open Access Journal
issn 2079-9292
language English
last_indexed 2024-03-11T05:39:08Z
publishDate 2023-04-01
publisher MDPI AG
record_format Article
series Electronics
spelling doaj.art-b8f46892b3174252898ce249cf78cad72023-11-17T16:34:25ZengMDPI AGElectronics2079-92922023-04-01127170310.3390/electronics12071703Machine-Learning-Based Optimization for Multiple-IRS-Aided Communication SystemMaha Fathy0Zesong Fei1Jing Guo2Mohamed Salah Abood3School of Information and Electronics Engineering, Beijing Institute of Technology, Beijing 100081, ChinaSchool of Information and Electronics Engineering, Beijing Institute of Technology, Beijing 100081, ChinaSchool of Information and Electronics Engineering, Beijing Institute of Technology, Beijing 100081, ChinaSchool of Information and Electronics Engineering, Beijing Institute of Technology, Beijing 100081, ChinaDue to the benefits of the spectrum and energy efficiency, intelligent reflecting surfaces (IRSs) are regarded as a promising technology for future networks. In this work, we consider a single cellular network where multiple IRSs are deployed to assist the downlink transmissions from the base station (BS) to multiple user equipment (UE). Hence, we aim to jointly optimize the configuration of the BS active beamforming and reflection beamforming of the IRSs that meet the UE’s QoS while allowing the lowest transmit power consumption at the BS. Although the conventional alternating approach is widely used to find converged solutions, its applicability is restricted by high complexity, which is more severe in a dynamic environment. Consequently, an alternative approach, i.e., machine learning (ML), is adopted to find the optimal solution with lower complexity. For the static UE scenario, we propose a low-complexity optimization algorithm based on the new generalized neural network (GRNN). Meanwhile, for the dynamic UE scenario, we propose a deep reinforcement learning (DRL)-based optimization algorithm. Specifically, a deep deterministic policy gradient (DDPG)-based algorithm is designed to address the GRNN algorithm’s restrictions and efficiently handle the dynamic UE scenario. Simulation results confirm that the proposed algorithms can achieve better power-saving performance and convergence with a noteworthy reduction in the computation time compared to the alternating optimization-based approaches. In addition, our results show that the total transmit power at the BS decreases with the increasing number of reflecting units at the IRSs.https://www.mdpi.com/2079-9292/12/7/1703intelligent reflecting surfacesjoint beamforming optimizationmachine learningdeep-reinforcement-based learning
spellingShingle Maha Fathy
Zesong Fei
Jing Guo
Mohamed Salah Abood
Machine-Learning-Based Optimization for Multiple-IRS-Aided Communication System
Electronics
intelligent reflecting surfaces
joint beamforming optimization
machine learning
deep-reinforcement-based learning
title Machine-Learning-Based Optimization for Multiple-IRS-Aided Communication System
title_full Machine-Learning-Based Optimization for Multiple-IRS-Aided Communication System
title_fullStr Machine-Learning-Based Optimization for Multiple-IRS-Aided Communication System
title_full_unstemmed Machine-Learning-Based Optimization for Multiple-IRS-Aided Communication System
title_short Machine-Learning-Based Optimization for Multiple-IRS-Aided Communication System
title_sort machine learning based optimization for multiple irs aided communication system
topic intelligent reflecting surfaces
joint beamforming optimization
machine learning
deep-reinforcement-based learning
url https://www.mdpi.com/2079-9292/12/7/1703
work_keys_str_mv AT mahafathy machinelearningbasedoptimizationformultipleirsaidedcommunicationsystem
AT zesongfei machinelearningbasedoptimizationformultipleirsaidedcommunicationsystem
AT jingguo machinelearningbasedoptimizationformultipleirsaidedcommunicationsystem
AT mohamedsalahabood machinelearningbasedoptimizationformultipleirsaidedcommunicationsystem