Transfer Learning in Multi-Agent Reinforcement Learning with Double Q-Networks for Distributed Resource Sharing in V2X Communication

Konferenz: WSA 2021 - 25th International ITG Workshop on Smart Antennas
10.11.2021 - 12.11.2021 in French Riviera, France

Tagungsband: ITG-Fb. 300: WSA 2021

Seiten: 6Sprache: EnglischTyp: PDF

Autoren:
Zafar, Hammad; Utkovski, Zoran; Kasparick, Martin; Stanczak, Sławomir (Wireless Communications and Networks, Fraunhofer Heinrich Hertz Institute Berlin, Germany)

Inhalt:
This paper addresses the problem of decentralized spectrum sharing in vehicle-to-everything (V2X) communication networks. The aim is to provide resource-efficient coexistence of vehicle-to-infrastructure (V2I) and vehicle-to-vehicle (V2V) links. A recent work on the topic proposes a multi-agent reinforcement learning (MARL) approach based on deep Q-learning, which leverages a fingerprint-based deep Q-network (DQN) architecture. This work considers an extension of this framework by combining Double Q-learning (via Double DQN) and transfer learning. The motivation behind is that Double Q-learning can alleviate the problem of overestimation of the action values present in conventional Q-learning, while transfer learning can leverage knowledge acquired by an expert model to accelerate learning in the MARL setting. The proposed algorithm is evaluated in a realistic V2X setting, with synthetic data generated based on a geometry-based propagation model that incorporates locationspecific geographical descriptors of the simulated environment (outlines of buildings, foliage, and vehicles). The advantages of the proposed approach are demonstrated via numerical simulations.