Increasing Energy Efficiency of Massive-MIMO Network via Base Stations Switching using Reinforcement Learning and Radio Environment Maps
Marcin Hoffmann, Pawel Kryszkiewicz, Adrian Kliks

TL;DR
This paper enhances energy efficiency in Massive-MIMO networks by using reinforcement learning and radio environment maps to intelligently switch base stations on and off, achieving significant energy savings and faster convergence.
Contribution
It introduces a novel RL-based BS switching algorithm utilizing REM data, with analytical filtering and exploration methods to improve efficiency and convergence speed.
Findings
70% energy efficiency gains over existing algorithms
Reduced RL convergence time by up to 83%
Validated with advanced 3D-ray-tracing radio channel model
Abstract
Energy Efficiency (EE) is of high importance while considering Massive Multiple-Input Multiple-Output (M-MIMO) networks where base stations (BSs) are equipped with an antenna array composed of up to hundreds of elements. M-MIMO transmission, although highly spectrally efficient, results in high energy consumption growing with the number of antennas. This paper investigates EE improvement through switching on/off underutilized BSs. It is proposed to use the location-aware approach, where data about an optimal active BSs set is stored in a Radio Environment Map (REM). For efficient acquisition, processing and utilization of the REM data, reinforcement learning (RL) algorithms are used. State-of-the-art exploration/exploitation methods including e-greedy, Upper Confidence Bound (UCB), and Gradient Bandit are evaluated. Then analytical action filtering, and an REM-based Exploration…
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Taxonomy
MethodsDense Connections · Q-Learning · Convolution · Deep Q-Network · Random Ensemble Mixture
