2018
DOI: 10.1155/2018/4184805
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Online Self-Organizing Network Control with Time Averaged Weighted Throughput Objective

Abstract: We study an online multisource multisink queueing network control problem characterized with self-organizing network structure and self-organizing job routing. We decompose the self-organizing queueing network control problem into a series of interrelated Markov Decision Processes and construct a control decision model for them based on the coupled reinforcement learning (RL) architecture. To maximize the mean time averaged weighted throughput of the jobs through the network, we propose a reinforcement learnin… Show more

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