Concurrent Decentralized Channel Allocation and Access Point Selection using Multi-Armed Bandits in multi BSS WLANs
\'Alvaro L\'opez-Ravent\'os, Boris Bellalta

TL;DR
This paper proposes a decentralized approach using Multi-Armed Bandits with Thompson sampling for channel allocation and AP selection in enterprise WLANs, demonstrating improved performance and reduced variability over static methods.
Contribution
It introduces a novel decentralized framework employing MABs for joint channel and AP selection, with independent agents effectively managing interrelated decisions in WLANs.
Findings
Outperforms static configurations across various network densities and traffic loads.
Reduces performance variability between different network scenarios.
Achieves comparable or better performance with fewer APs for the same number of stations.
Abstract
Enterprise Wireless Local Area Networks (WLANs) consist of multiple Access Points (APs) covering a given area. Finding a suitable network configuration able to maximize the performance of enterprise WLANs is a challenging task given the complex dependencies between APs and stations. Recently, in wireless networking, the use of reinforcement learning techniques has emerged as an effective solution to efficiently explore the impact of different network configurations in the system performance, identifying those that provide better performance. In this paper, we study if Multi-Armed Bandits (MABs) are able to offer a feasible solution to the decentralized channel allocation and AP selection problems in Enterprise WLAN scenarios. To do so, we empower APs and stations with agents that, by means of implementing the Thompson sampling algorithm, explore and learn which is the best channel to…
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