A distributed multi-vehicle architecture for autonomous driving simulation with an application to autonomous valet parking

Loading...
Thumbnail Image

Journal Title

Journal ISSN

Volume Title

Publisher

Abstract

Simulation platforms are essential for developing and validating autonomous driving systems before real-world deployment. However, most existing simulators are designed for single-vehicle scenarios and provide limited support for distributed multi-vehicle experimentation across multiple computing hosts. This thesis presents the Distributed Multi- Autonomous Vehicle Architecture (DMAVA), which enables multiple AVs to operate concurrently in a shared simulation environment while maintaining independent autonomy stacks. The architecture integrates Autoware, AWSIM Labs, ROS 2 namespaces, and Zenoh-based cross-host communication to support distributed experimentation. Building on this framework, the Distributed Multi-Vehicle Autonomous Valet Parking System (DMV-AVP) is introduced as an application layer that integrates infrastructure-assisted perception through a YOLOv5-based overhead camera module and a multi-vehicle AVP coordination framework for managing shared parking resources. The system enables coordinated vehicle sequencing, exclusive parking spot allocation, and distributed vehicle state synchronization. Experimental validation using two-host and three-host deployments demonstrates stable localization, reliable inter-host communication, and coordinated multi-vehicle AVP behavior.

Description

Keywords

Citation

Endorsement

Review

Supplemented By

Referenced By