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Research paper

A Decision-Making Model for Autonomous Vehicles at Intersections Based on Hierarchical Reinforcement Learning

Xue-Mei Chen*, Shu-Yuan Xu*Zi-Jia Wang*Xue-Long Zheng*Xin-Tong HanEn-Hao Liu*
School of Mechanical Engineering, Beijing Institute of Technology, 5th South ZhongGuanCun Street, Beijing, P. R. China
Advanced Technology Research Institute, Beijing Institute of Technology, 8366 Haitang Road, Jinan, Shandong, P. R. China

This paper was recommended for publication in its revised form by editorial board member, Jinwen Hu.

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Abstract

By aiming at addressing the left-turning problem of an autonomous vehicle considering the oncoming vehicles at an urban unsignallized intersection, a hierarchical reinforcement learning is proposed and a two-layer model is established to study behaviors of left-turning driving. Compared with the conventional decision-making models with a fixed path, the proposed multi-paths decision-making algorithm with horizontal and vertical strategies can improve the efficiency of autonomous vehicles crossing intersections while ensuring safety.

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Unmanned Systems
Pages 641-652

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Cite this article:
Chen X-M, Xu S-Y, Wang Z-J, et al. A Decision-Making Model for Autonomous Vehicles at Intersections Based on Hierarchical Reinforcement Learning. Unmanned Systems, 2024, 12(4): 641-652. https://doi.org/10.1142/S2301385024500122

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Received: 05 May 2022
Revised: 04 December 2022
Accepted: 04 December 2022
Published: 28 January 2023
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