Motion planning and control for autonomous vehicle collision avoidance systems using potential field-based parameter scheduling

Establishing an efficient and safe maneuver is an important part toward the successful development of autonomous vehicle collision avoidance systems in encountering the risk of imminent collision. A real driving environment deals with various dynamic conditions such as different vehicle speeds and n...

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Main Authors: Nurbaiti, Wahid, Hairi, Zamzuri, Noor Hafizah, Amer, Dwijotomo, Abdurahman, Sarah ‘Atifah, Saruchi
Format: Book Chapter
Language:English
English
Published: Elsevier Inc. 2024
Subjects:
Online Access:http://umpir.ump.edu.my/id/eprint/42575/1/Book%20Chapter%20-%20Motion%20planning%20and%20control%20for%20autonomous%20vehicle%20collision%20avoidance%20systems%20using%20potential%20field-based%20parameter%20scheduling.pdf
http://umpir.ump.edu.my/id/eprint/42575/2/Motion%20planning%20and%20control%20for%20autonomous%20vehicle%20collision%20avoidance%20systems%20using%20potential%20field-based%20parameter%20scheduling.pdf
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author Nurbaiti, Wahid
Hairi, Zamzuri
Noor Hafizah, Amer
Dwijotomo, Abdurahman
Sarah ‘Atifah, Saruchi
author_facet Nurbaiti, Wahid
Hairi, Zamzuri
Noor Hafizah, Amer
Dwijotomo, Abdurahman
Sarah ‘Atifah, Saruchi
author_sort Nurbaiti, Wahid
collection UMP
description Establishing an efficient and safe maneuver is an important part toward the successful development of autonomous vehicle collision avoidance systems in encountering the risk of imminent collision. A real driving environment deals with various dynamic conditions such as different vehicle speeds and numerous driving situations. Therefore, an adaptive strategy in a collision avoidance system is necessary in providing an appropriate vehicle motion and feasible trajectory of control for collision-free maneuver to guarantee safety. This study proposed a motion planning and control strategy for an autonomous vehicle collision avoidance system based on the potential field (PF) approach with a combination of the parameter scheduling technique. A particle swarm optimization algorithm is used to optimize the knowledge database information that is developed based on the perception of driver toward risk in the driving environment. This is the main component in developing the adaptive mechanism to adapt to numerous vehicle speeds and different obstacle positions during avoidance maneuver. The main contribution of this work is the improvement of a feasible vehicle motion for safe collision avoidance maneuver that is generated based on the reference lateral motion provided by the motion planner. Results demonstrate that the proposed motion planning and control strategy managed to decrease the lateral error with respect to the avoidance trajectory data and maximum reference lateral motion of up to 77% and 73% respectively compared to base-type PF. The proposed strategy is then validated on an actual steering wheel system through the hardware in loop test.
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spelling UMPir425752024-09-11T07:43:09Z http://umpir.ump.edu.my/id/eprint/42575/ Motion planning and control for autonomous vehicle collision avoidance systems using potential field-based parameter scheduling Nurbaiti, Wahid Hairi, Zamzuri Noor Hafizah, Amer Dwijotomo, Abdurahman Sarah ‘Atifah, Saruchi TJ Mechanical engineering and machinery TS Manufactures Establishing an efficient and safe maneuver is an important part toward the successful development of autonomous vehicle collision avoidance systems in encountering the risk of imminent collision. A real driving environment deals with various dynamic conditions such as different vehicle speeds and numerous driving situations. Therefore, an adaptive strategy in a collision avoidance system is necessary in providing an appropriate vehicle motion and feasible trajectory of control for collision-free maneuver to guarantee safety. This study proposed a motion planning and control strategy for an autonomous vehicle collision avoidance system based on the potential field (PF) approach with a combination of the parameter scheduling technique. A particle swarm optimization algorithm is used to optimize the knowledge database information that is developed based on the perception of driver toward risk in the driving environment. This is the main component in developing the adaptive mechanism to adapt to numerous vehicle speeds and different obstacle positions during avoidance maneuver. The main contribution of this work is the improvement of a feasible vehicle motion for safe collision avoidance maneuver that is generated based on the reference lateral motion provided by the motion planner. Results demonstrate that the proposed motion planning and control strategy managed to decrease the lateral error with respect to the avoidance trajectory data and maximum reference lateral motion of up to 77% and 73% respectively compared to base-type PF. The proposed strategy is then validated on an actual steering wheel system through the hardware in loop test. Elsevier Inc. 2024 Book Chapter PeerReviewed pdf en http://umpir.ump.edu.my/id/eprint/42575/1/Book%20Chapter%20-%20Motion%20planning%20and%20control%20for%20autonomous%20vehicle%20collision%20avoidance%20systems%20using%20potential%20field-based%20parameter%20scheduling.pdf pdf en http://umpir.ump.edu.my/id/eprint/42575/2/Motion%20planning%20and%20control%20for%20autonomous%20vehicle%20collision%20avoidance%20systems%20using%20potential%20field-based%20parameter%20scheduling.pdf Nurbaiti, Wahid and Hairi, Zamzuri and Noor Hafizah, Amer and Dwijotomo, Abdurahman and Sarah ‘Atifah, Saruchi (2024) Motion planning and control for autonomous vehicle collision avoidance systems using potential field-based parameter scheduling. In: Machine Intelligence in Mechanical Engineering. Elsevier Inc., pp. 149-177. ISBN 9780443186448 https://doi.org/10.1016/B978-0-443-18644-8.00003-4
spellingShingle TJ Mechanical engineering and machinery
TS Manufactures
Nurbaiti, Wahid
Hairi, Zamzuri
Noor Hafizah, Amer
Dwijotomo, Abdurahman
Sarah ‘Atifah, Saruchi
Motion planning and control for autonomous vehicle collision avoidance systems using potential field-based parameter scheduling
title Motion planning and control for autonomous vehicle collision avoidance systems using potential field-based parameter scheduling
title_full Motion planning and control for autonomous vehicle collision avoidance systems using potential field-based parameter scheduling
title_fullStr Motion planning and control for autonomous vehicle collision avoidance systems using potential field-based parameter scheduling
title_full_unstemmed Motion planning and control for autonomous vehicle collision avoidance systems using potential field-based parameter scheduling
title_short Motion planning and control for autonomous vehicle collision avoidance systems using potential field-based parameter scheduling
title_sort motion planning and control for autonomous vehicle collision avoidance systems using potential field based parameter scheduling
topic TJ Mechanical engineering and machinery
TS Manufactures
url http://umpir.ump.edu.my/id/eprint/42575/1/Book%20Chapter%20-%20Motion%20planning%20and%20control%20for%20autonomous%20vehicle%20collision%20avoidance%20systems%20using%20potential%20field-based%20parameter%20scheduling.pdf
http://umpir.ump.edu.my/id/eprint/42575/2/Motion%20planning%20and%20control%20for%20autonomous%20vehicle%20collision%20avoidance%20systems%20using%20potential%20field-based%20parameter%20scheduling.pdf
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