Road Traffic Law Adaptive Decision-making for Self-Driving Vehicles
Self-driving vehicles have their own intelligence to drive on open roads. However, vehicle managers, e.g., government or industrial companies, still need a way to tell these self-driving vehicles what behaviors are encouraged or forbidden. Unlike human drivers, current self-driving vehicles cannot u...
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Published in | 2022 IEEE 25th International Conference on Intelligent Transportation Systems (ITSC) pp. 2034 - 2041 |
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Main Authors | , , , , , , , , |
Format | Conference Proceeding |
Language | English |
Published |
IEEE
08.10.2022
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Subjects | |
Online Access | Get full text |
DOI | 10.1109/ITSC55140.2022.9922208 |
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Abstract | Self-driving vehicles have their own intelligence to drive on open roads. However, vehicle managers, e.g., government or industrial companies, still need a way to tell these self-driving vehicles what behaviors are encouraged or forbidden. Unlike human drivers, current self-driving vehicles cannot understand the traffic laws, and thus rely on the programmers manually writing the corresponding principles into the driving systems. It would be less efficient and hard to adapt some temporary traffic laws, especially when the vehicles use data-driven decision-making algorithms. Besides, current self-driving vehicle systems rarely take traffic law modification into consideration. This work aims to design a road traffic law adaptive decision-making method. The decision-making algorithm is designed based on reinforcement learning, in which the traffic rules are usually implicitly coded in deep neural networks. The main idea is to supply the adaptability to traffic laws of self-driving vehicles by a law-adaptive backup policy. In this work, the natural language-based traffic laws are first translated into a logical expression by the Linear Temporal Logic method. Then, the system will try to monitor in advance whether the self-driving vehicle may break the traffic laws by designing a long-term RL action space. Finally, a sample-based planning method will re-plan the trajectory when the vehicle may break the traffic rules. The method is validated in a Beijing Winter Olympic Lane scenario and an overtaking case, built in CARLA simulator. The results show that by adopting this method, self-driving vehicles can comply with new issued or updated traffic laws effectively. This method helps self-driving vehicles governed by digital traffic laws, which is necessary for the wide adoption of autonomous driving. |
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AbstractList | Self-driving vehicles have their own intelligence to drive on open roads. However, vehicle managers, e.g., government or industrial companies, still need a way to tell these self-driving vehicles what behaviors are encouraged or forbidden. Unlike human drivers, current self-driving vehicles cannot understand the traffic laws, and thus rely on the programmers manually writing the corresponding principles into the driving systems. It would be less efficient and hard to adapt some temporary traffic laws, especially when the vehicles use data-driven decision-making algorithms. Besides, current self-driving vehicle systems rarely take traffic law modification into consideration. This work aims to design a road traffic law adaptive decision-making method. The decision-making algorithm is designed based on reinforcement learning, in which the traffic rules are usually implicitly coded in deep neural networks. The main idea is to supply the adaptability to traffic laws of self-driving vehicles by a law-adaptive backup policy. In this work, the natural language-based traffic laws are first translated into a logical expression by the Linear Temporal Logic method. Then, the system will try to monitor in advance whether the self-driving vehicle may break the traffic laws by designing a long-term RL action space. Finally, a sample-based planning method will re-plan the trajectory when the vehicle may break the traffic rules. The method is validated in a Beijing Winter Olympic Lane scenario and an overtaking case, built in CARLA simulator. The results show that by adopting this method, self-driving vehicles can comply with new issued or updated traffic laws effectively. This method helps self-driving vehicles governed by digital traffic laws, which is necessary for the wide adoption of autonomous driving. |
Author | Li, Jun Zhao, Ding Yu, Wenhao Liu, Jiaxin Wang, Hong Zhou, Wenhui Zhao, Chengxiang Cao, Zhong Yang, Diange |
Author_xml | – sequence: 1 givenname: Jiaxin surname: Liu fullname: Liu, Jiaxin email: liu-jx21@mails.tsinghua.edu.cn organization: School of Vehicle and Mobility, Tsinghua University,Beijing,China,100084 – sequence: 2 givenname: Wenhui surname: Zhou fullname: Zhou, Wenhui email: 1983zhouwenhui@163.com organization: Road Traffic Safety Research Center,Beijing,China,100062 – sequence: 3 givenname: Hong surname: Wang fullname: Wang, Hong email: hong_wang@tsinghua.edu.cn organization: School of Vehicle and Mobility, Tsinghua University,Beijing,China,100084 – sequence: 4 givenname: Zhong surname: Cao fullname: Cao, Zhong email: wenhaoyu@tsinghua.edu.cn organization: School of Vehicle and Mobility, Tsinghua University,Beijing,China,100084 – sequence: 5 givenname: Wenhao surname: Yu fullname: Yu, Wenhao organization: School of Vehicle and Mobility, Tsinghua University,Beijing,China,100084 – sequence: 6 givenname: Chengxiang surname: Zhao fullname: Zhao, Chengxiang email: 3220210327@bit.edu.cn organization: School of Mechanical Engineering, Beijing Institute of Technology,Beijing,China,100081 – sequence: 7 givenname: Ding surname: Zhao fullname: Zhao, Ding email: dingzhao@cmu.edu organization: Carnegie Mellon University,Department of Mechanical Engineering,USA – sequence: 8 givenname: Diange surname: Yang fullname: Yang, Diange email: ydg@tsinghua.edu.cn organization: School of Vehicle and Mobility, Tsinghua University,Beijing,China,100084 – sequence: 9 givenname: Jun surname: Li fullname: Li, Jun email: lijun1958@tsinghua.edu.cn organization: School of Vehicle and Mobility, Tsinghua University,Beijing,China,100084 |
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SubjectTerms | Decision making Government Neural networks Reinforcement learning Roads self-driving vehicle Space vehicles traffic law Writing |
Title | Road Traffic Law Adaptive Decision-making for Self-Driving Vehicles |
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