Framework for Connected and Automated Bus Rapid Transit with Sectionalized Speed Guidance based on deep reinforcement learning: Field test in Sejong City

https://doi.org/10.1016/j.trc.2023.104049Get rights and content
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Highlights

  • Proposes Architecture for Traffic Management Center in Cloud Platform.

  • Proposes Speed Guidance System for Connected and Automated Bus Rapid Transit.

  • Evaluates Deep Reinforcement Learning for Vehicle Control in Real-world Experiments.

Abstract

Nowadays, Automated Vehicle (AV) technology is gaining attention as a candidate to improve the efficiency of Bus Rapid Transit (BRT) systems. However, there are still some challenges in AV technology including limited perception range and lack of cooperation capability in mixed traffic situations with drivers. The emerging Connected and Automated Vehicles (CAVs) and Cooperative Intelligent Transportation System (C-ITS) offer an unprecedented opportunity to solve such challenges. As a result, this study presents a framework for Connected and Automated BRT (CA-BRT), including a cloud-based architecture and a deep reinforcement learning system for Sectionalized Speed Guidance (SSG) system designed for CAVs. The proposed framework is field-tested in Sejong City in South Korea, where there are various road environments such as bus stops, overpasses, underground tunnels, intersections, and crosswalks. The driving performance of the proposed system is compared with different types of control scenarios, and the results from the field tests show that the proposed system improves the driving performance of the AVs in various aspects including driving safety, ride comfort, and energy efficiency with downstream information obtained from road infrastructures.

Keywords

Cooperative intelligent transportation system
Connected and automated vehicles
Bus rapid transit speed guidance
Deep reinforcement learning

Data availability

The authors do not have permission to share data.

Cited by (0)

1

Co-first authors who contributed equally to this paper.