Vehicle collision avoidance motion planning strategy using artificial potential field with adaptive multi-speed scheduler

This study presents an adaptive motion planning strategy for automated vehicle collision avoidance systems to be associated with the variation of collision speed region based on the position of the obstacle. This is done by designing the motion planner using an artificial potential field (APF) with...

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Published in:IET Intelligent Transport Systems
Main Author: Wahid N.; Zamzuri H.; Amer N.H.; Dwijotomo A.; Saruchi S.A.; Mazlan S.A.
Format: Article
Language:English
Published: Institution of Engineering and Technology 2020
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85091397506&doi=10.1049%2fiet-its.2020.0048&partnerID=40&md5=32fa966b43af266583b4506dc616882c
id 2-s2.0-85091397506
spelling 2-s2.0-85091397506
Wahid N.; Zamzuri H.; Amer N.H.; Dwijotomo A.; Saruchi S.A.; Mazlan S.A.
Vehicle collision avoidance motion planning strategy using artificial potential field with adaptive multi-speed scheduler
2020
IET Intelligent Transport Systems
14
10
10.1049/iet-its.2020.0048
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85091397506&doi=10.1049%2fiet-its.2020.0048&partnerID=40&md5=32fa966b43af266583b4506dc616882c
This study presents an adaptive motion planning strategy for automated vehicle collision avoidance systems to be associated with the variation of collision speed region based on the position of the obstacle. This is done by designing the motion planner using an artificial potential field (APF) with the incorporation of an adaptive multi-speed scheduler using fuzzy system in the motion planning structure. The knowledge database information is developed based on the risk perception of the driver that consists of APF parameters and was optimised by using particle swarm optimisation algorithm. This study contributes to the improvement of a feasible reference motion generated by the motion planner that can be converted into desired control signals. The reference motion resulted to provide the control command that managed to avoid collision successfully by evasive manoeuvre without lane departure when adapting to variation in the vehicle speeds with different obstacle positions. The results indicated the reduction of the lateral error with respect to the reference avoidance trajectory data of up to 87% compared to base-type APF with maximum reference lateral motion is reduced of up to 26%. Then, a hardware-in-loop test is conducted to verify the proposed strategy using a steering wheel system. © The Institution of Engineering and Technology 2020
Institution of Engineering and Technology
1751956X
English
Article

author Wahid N.; Zamzuri H.; Amer N.H.; Dwijotomo A.; Saruchi S.A.; Mazlan S.A.
spellingShingle Wahid N.; Zamzuri H.; Amer N.H.; Dwijotomo A.; Saruchi S.A.; Mazlan S.A.
Vehicle collision avoidance motion planning strategy using artificial potential field with adaptive multi-speed scheduler
author_facet Wahid N.; Zamzuri H.; Amer N.H.; Dwijotomo A.; Saruchi S.A.; Mazlan S.A.
author_sort Wahid N.; Zamzuri H.; Amer N.H.; Dwijotomo A.; Saruchi S.A.; Mazlan S.A.
title Vehicle collision avoidance motion planning strategy using artificial potential field with adaptive multi-speed scheduler
title_short Vehicle collision avoidance motion planning strategy using artificial potential field with adaptive multi-speed scheduler
title_full Vehicle collision avoidance motion planning strategy using artificial potential field with adaptive multi-speed scheduler
title_fullStr Vehicle collision avoidance motion planning strategy using artificial potential field with adaptive multi-speed scheduler
title_full_unstemmed Vehicle collision avoidance motion planning strategy using artificial potential field with adaptive multi-speed scheduler
title_sort Vehicle collision avoidance motion planning strategy using artificial potential field with adaptive multi-speed scheduler
publishDate 2020
container_title IET Intelligent Transport Systems
container_volume 14
container_issue 10
doi_str_mv 10.1049/iet-its.2020.0048
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85091397506&doi=10.1049%2fiet-its.2020.0048&partnerID=40&md5=32fa966b43af266583b4506dc616882c
description This study presents an adaptive motion planning strategy for automated vehicle collision avoidance systems to be associated with the variation of collision speed region based on the position of the obstacle. This is done by designing the motion planner using an artificial potential field (APF) with the incorporation of an adaptive multi-speed scheduler using fuzzy system in the motion planning structure. The knowledge database information is developed based on the risk perception of the driver that consists of APF parameters and was optimised by using particle swarm optimisation algorithm. This study contributes to the improvement of a feasible reference motion generated by the motion planner that can be converted into desired control signals. The reference motion resulted to provide the control command that managed to avoid collision successfully by evasive manoeuvre without lane departure when adapting to variation in the vehicle speeds with different obstacle positions. The results indicated the reduction of the lateral error with respect to the reference avoidance trajectory data of up to 87% compared to base-type APF with maximum reference lateral motion is reduced of up to 26%. Then, a hardware-in-loop test is conducted to verify the proposed strategy using a steering wheel system. © The Institution of Engineering and Technology 2020
publisher Institution of Engineering and Technology
issn 1751956X
language English
format Article
accesstype
record_format scopus
collection Scopus
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