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Energy Saving in Cellular Wireless Networks via Transfer Deep Reinforcement Learning

Di Wu, Yi Xu, Michael Jenkin, Seowoo Jang, Ekram Hossain, Xue Liu, Gregory Dudek

202313 citationsDOI

Abstract

With the increasing use of data-intensive mobile applications and the number of mobile users, the demand for wireless data services has been increasing exponentially in recent years. In order to address this demand, a large number of new cellular base stations are being deployed around the world, leading to a significant increase in energy consumption and greenhouse gas emission. Consequently, energy consumption has emerged as a key concern in the fifth-generation (5G) network era and beyond. Reinforcement learning (RL), which aims to learn a control policy via interacting with the environment, has been shown to be effective in addressing network optimization problems. However, for reinforcement learning, especially deep reinforcement learning, a large number of interactions with the environment are required. This often limits its applicability in the real world. In this work, to better deal with dynamic traffic scenarios and improve real-world applicability, we propose a transfer deep reinforcement learning framework for energy optimization in cellular communication networks. Specifically, we first pre-train a set of RL-based energy-saving policies on source base stations and then transfer the most suitable policy to the given target base station in an unsupervised learning manner. Experimental results demonstrate that base station energy consumption can be reduced significantly using this approach.

Topics & Concepts

Reinforcement learningComputer scienceTransfer of learningWirelessEnergy transferComputer networkWireless networkDistributed computingArtificial intelligenceTelecommunicationsEngineeringEngineering physicsAdvanced MIMO Systems OptimizationEnergy Harvesting in Wireless NetworksWireless Networks and Protocols