Non-Uniform Time-Step Deep Q-Network for Carrier-Sense Multiple Access in Heterogeneous Wireless Networks
Yiding Yu, Soung Chang Liew, Taotao Wang

TL;DR
This paper introduces a non-uniform time-step deep Q-network for carrier-sense multiple access, enabling efficient spectrum sharing in heterogeneous wireless networks through a novel DRL-based protocol.
Contribution
It proposes a non-uniform time-step formulation of DQN for CSMA, allowing adaptive spectrum sharing with various MAC protocols without prior knowledge.
Findings
CS-DLMA achieves alpha-fairness with TDMA, ALOHA, and WiFi.
CS-DLMA outperforms traditional CSMA protocols in Pareto efficiency.
The approach adapts to different objectives by tuning alpha.
Abstract
This paper investigates a new class of carrier-sense multiple access (CSMA) protocols that employ deep reinforcement learning (DRL) techniques, referred to as carrier-sense deep-reinforcement learning multiple access (CS-DLMA). The goal of CS-DLMA is to enable efficient and equitable spectrum sharing among a group of co-located heterogeneous wireless networks. Existing CSMA protocols, such as the medium access control (MAC) of WiFi, are designed for a homogeneous network in which all nodes adopt the same protocol. Such protocols suffer from severe performance degradation in a heterogeneous environment where there are nodes adopting other MAC protocols. CS-DLMA aims to circumvent this problem by making use of DRL. In particular, this paper adopts alpha-fairness as the general objective of CS-DLMA. With alpha-fairness, CS-DLMA can achieve a range of different objectives when coexisting…
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Taxonomy
TopicsWireless Networks and Protocols · Indoor and Outdoor Localization Technologies · Cognitive Radio Networks and Spectrum Sensing
