Routing Control Optimization for Autonomous Vehicles in Mixed Traffic Flow Based on Deep Reinforcement Learning

Author:

Moon Sungwon1,Koo Seolwon1ORCID,Lim Yujin2ORCID,Joo Hyunjin3

Affiliation:

1. Department of IT Engineering, Sookmyung Women’s University, Seoul 04310, Republic of Korea

2. Division of Artificial Intelligence Engineering, Sookmyung Women’s University, Seoul 04310, Republic of Korea

3. Department of Highway & Transportation Research, Korea Institute of Civil Engineering and Building Technology, Goyang 10223, Republic of Korea

Abstract

With recent technological advancements, the commercialization of autonomous vehicles (AVs) is expected to be realized soon. However, it is anticipated that a mixed traffic of AVs and human-driven vehicles (HVs) will persist for a considerable period until the Market Penetration Rate reaches 100%. During this phase, AVs and HVs will interact and coexist on the roads. Such an environment can cause unpredictable and dynamic traffic conditions due to HVs, which results in traffic problems including traffic congestion. Therefore, the routes of AVs must be controlled in a mixed traffic environment. This study proposes a multi-objective vehicle routing control method using a deep Q-network to control the driving direction at intersections in a mixed traffic environment. The objective is to distribute the traffic flow and control the routes safely and efficiently to their destination. Simulation results showed that the proposed method outperformed existing methods in terms of the driving distance, time, and waiting time of AVs, particularly in more dynamic traffic environments. Consequently, the traffic became smooth as it moved along optimal routes.

Funder

Korea Institute of Civil Engineering and Building Technology

National Research Foundation of Korea

Publisher

MDPI AG

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