Low Power Wireless Communication via Reinforcement Learning

Brown, Timothy X.

Neural Information Processing Systems 

This paper examines the application of reinforcement learning to a wireless communicationproblem. The problem requires that channel utility be maximized while simultaneously minimizing battery usage. We present a solution to this multi-criteria problem that is able to significantly reducepower consumption. The solution uses a variable discount factor to capture the effects of battery usage. 1 Introduction Reinforcement learning (RL) has been applied to resource allocation problems in telecommunications, e.g.,channel allocation in wireless systems, network routing, and admission control in telecommunication networks [1,2, 8, 10]. These have demonstrated reinforcement learningcan find good policies that significantly increase the application reward within the dynamics of the telecommunication problems.

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