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Online self-organizing network control with time averaged weighted throughput objective (Q1727088)

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scientific article; zbMATH DE number 7026575
Language Label Description Also known as
English
Online self-organizing network control with time averaged weighted throughput objective
scientific article; zbMATH DE number 7026575

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    Online self-organizing network control with time averaged weighted throughput objective (English)
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    20 February 2019
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    Summary: 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 learning algorithm with time averaged reward to deal with the control decision model and obtain a control policy integrating the jobs routing selection strategy and the jobs sequencing strategy. Computational experiments verify the learning ability and the effectiveness of the proposed reinforcement learning algorithm applied in the investigated self-organizing network control problem.
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