MARL-based Resource Allocation for Heterogeneous Traffic in V2X Communications

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초록

New Radio Vehicle-to-Everything (NR-V2X) has been recognized as a key technology for advanced driving applications such as autonomous driving, platooning, and Intelligent Transportation Systems (ITS). However, this also has led to the emergence of a heterogeneous traffic environment, where packets with diverse purposes, formats, and priorities are transmitted over the V2X network. Therefore, in order to meet the strict Quality of Service (QoS) requirements of NR-V2X in a heterogeneous traffic environment with limited shared resources, developing appropriate resource allocation methods for NR-V2X became one of the major problems. This paper proposes a Multi-Agent Reinforcement Learning (MARL) approach to address this issue. We propose to improve the overall Packet Reception Ratio (PRR) performance of the V2X network. Through simulations, we demonstrate a comparison of the PRR of the proposed approach with random/optimal resource allocation methods. We confirm that our proposed method performed almost similarly to an optimal resource allocation scheme.

키워드

New Radio vehicle-to-everything (NR-V2X)Resource AllocationMulti-Agent Reinforcement LearningHeterogeneous Traffic
제목
MARL-based Resource Allocation for Heterogeneous Traffic in V2X Communications
저자
Lee, InsungKim, Duk Kyung
DOI
10.1109/APCC60132.2023.10460728
발행일
2023
유형
Proceedings Paper
저널명
2023 28TH ASIA PACIFIC CONFERENCE ON COMMUNICATIONS, APCC 2023
페이지
61 ~ 67