Learning-Based Algorithms for Channel Allocations in Wireless Mesh Network

Chien-Liang Kuo, Jin-Wei Kuo, Xuan-Zhe Chen,Li-Hsing Yen

2022 23rd Asia-Pacific Network Operations and Management Symposium (APNOMS)(2022)

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摘要
Many studies have been devoted to channel allocation for backhaul links in wireless mesh networks. Among them, a game-theoretic approach proposed by Yen and Dai is promising for the ability to self-stabilize to a valid solution in a decentralized manner. However, game-based solutions are generally not optimal. Furthermore, Yen and Dai's approach did not fully utilize all available channels, wasting scarce bandwidth resource. In this paper, we propose two learning-based approaches to enhance the prior work. One uses Spatial Adaptive Play (SAP) for agents to learn best probability distributions on their possible channel selections. The other based on multi-agent reinforcement learning (MARL) algorithm allows each agent to find out its best selection over time. Simulation results reveal that the proposed approaches do improve the game-based solutions in terms of the number of operative links after channel allocations.
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关键词
channel allocations,wireless mesh network,backhaul links,game-theoretic approach,Yen,Dai,valid solution,game-based solutions,scarce bandwidth resource,learning-based approaches,Spatial Adaptive Play,possible channel selections,multiagent reinforcement learning algorithm
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