Obstacle avoidance and formation control of multiple unmanned vehicles in complex environments based on artificial potential field method

Addressing the increasing complexity of tasks, single unmanned vehicles have become unable to meet actual operational requirements, prompting a shift toward multivehicle formation systems. However, in complex environments, issues such as high collision rates and unstable formations in multivehicle o...

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Main Authors: Yilin MEI, Likun CUI, Xueyan HU, Guangqi HU, Hao WANG
Format: Article
Language:zho
Published: Science Press 2025-02-01
Series:工程科学学报
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Online Access:http://cje.ustb.edu.cn/article/doi/10.13374/j.issn2095-9389.2024.05.05.002
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author Yilin MEI
Likun CUI
Xueyan HU
Guangqi HU
Hao WANG
author_facet Yilin MEI
Likun CUI
Xueyan HU
Guangqi HU
Hao WANG
author_sort Yilin MEI
collection DOAJ
description Addressing the increasing complexity of tasks, single unmanned vehicles have become unable to meet actual operational requirements, prompting a shift toward multivehicle formation systems. However, in complex environments, issues such as high collision rates and unstable formations in multivehicle obstacle avoidance and formation control persist. A review of existing literature reveals that most research focuses on static obstacle environments, which do not accurately reflect real-world conditions. To tackle the issues of collision with obstacles and formation instability in dynamic and dense environments, a multivehicle obstacle avoidance and formation control method based on the potential field method was proposed. The attraction potential field function was modified to stabilize the attraction force at certain distances, addressing problems like vehicle–obstacle collisions and target point inaccessibility owing to excessive gravity in the early stage. A smoother repulsive was implemented to optimize the repulsive potential field function, preventing unmanned vehicles from lingering near obstacles caused by excessive repulsive force when too close to the obstacles. The A stability force was defined to maintain stable formations during movement, allowing vehicles to break free from local minima under its influence. The method also incorporated the velocity repulsive potential field for dynamic obstacles and an attraction potential field for sparse obstacles, enhancing the success rate of obstacle avoidance and path planning in complex environments. Compared to traditional artificial potential field methods and the improved algorithms, the simulation results show that the proposed method effectively maintains formation stability and exhibits high anti-interference capabilities in complex environments. Specifically, the success rate of obstacle avoidance in dynamic environments increased by 35% compared to traditional algorithms and by 10% compared to improved algorithms. In dense, dynamic obstacle environments, the success rate increased by 55% and 10%, respectively. The proposed method provides a reference method for multivehicle formation and obstacle avoidance in complex environments.
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spelling doaj-art-8351f53fc6e745dcb7d7506d273647052025-01-03T01:21:00ZzhoScience Press工程科学学报2095-93892025-02-0147236437310.13374/j.issn2095-9389.2024.05.05.002240505-0002Obstacle avoidance and formation control of multiple unmanned vehicles in complex environments based on artificial potential field methodYilin MEI0Likun CUI1Xueyan HU2Guangqi HU3Hao WANG4School of Mechanical Engineering, Shaanxi University of Technology, Hanzhong 723001, ChinaSchool of Mechanical Engineering, Shaanxi University of Technology, Hanzhong 723001, ChinaSchool of Mechanical Engineering, Shaanxi University of Technology, Hanzhong 723001, ChinaSchool of Mechanical Engineering, Shaanxi University of Technology, Hanzhong 723001, ChinaSchool of Mechanical Engineering, Shaanxi University of Technology, Hanzhong 723001, ChinaAddressing the increasing complexity of tasks, single unmanned vehicles have become unable to meet actual operational requirements, prompting a shift toward multivehicle formation systems. However, in complex environments, issues such as high collision rates and unstable formations in multivehicle obstacle avoidance and formation control persist. A review of existing literature reveals that most research focuses on static obstacle environments, which do not accurately reflect real-world conditions. To tackle the issues of collision with obstacles and formation instability in dynamic and dense environments, a multivehicle obstacle avoidance and formation control method based on the potential field method was proposed. The attraction potential field function was modified to stabilize the attraction force at certain distances, addressing problems like vehicle–obstacle collisions and target point inaccessibility owing to excessive gravity in the early stage. A smoother repulsive was implemented to optimize the repulsive potential field function, preventing unmanned vehicles from lingering near obstacles caused by excessive repulsive force when too close to the obstacles. The A stability force was defined to maintain stable formations during movement, allowing vehicles to break free from local minima under its influence. The method also incorporated the velocity repulsive potential field for dynamic obstacles and an attraction potential field for sparse obstacles, enhancing the success rate of obstacle avoidance and path planning in complex environments. Compared to traditional artificial potential field methods and the improved algorithms, the simulation results show that the proposed method effectively maintains formation stability and exhibits high anti-interference capabilities in complex environments. Specifically, the success rate of obstacle avoidance in dynamic environments increased by 35% compared to traditional algorithms and by 10% compared to improved algorithms. In dense, dynamic obstacle environments, the success rate increased by 55% and 10%, respectively. The proposed method provides a reference method for multivehicle formation and obstacle avoidance in complex environments.http://cje.ustb.edu.cn/article/doi/10.13374/j.issn2095-9389.2024.05.05.002artificial potential fieldformation controlobstacle avoidancedynamic obstacledense obstacles
spellingShingle Yilin MEI
Likun CUI
Xueyan HU
Guangqi HU
Hao WANG
Obstacle avoidance and formation control of multiple unmanned vehicles in complex environments based on artificial potential field method
工程科学学报
artificial potential field
formation control
obstacle avoidance
dynamic obstacle
dense obstacles
title Obstacle avoidance and formation control of multiple unmanned vehicles in complex environments based on artificial potential field method
title_full Obstacle avoidance and formation control of multiple unmanned vehicles in complex environments based on artificial potential field method
title_fullStr Obstacle avoidance and formation control of multiple unmanned vehicles in complex environments based on artificial potential field method
title_full_unstemmed Obstacle avoidance and formation control of multiple unmanned vehicles in complex environments based on artificial potential field method
title_short Obstacle avoidance and formation control of multiple unmanned vehicles in complex environments based on artificial potential field method
title_sort obstacle avoidance and formation control of multiple unmanned vehicles in complex environments based on artificial potential field method
topic artificial potential field
formation control
obstacle avoidance
dynamic obstacle
dense obstacles
url http://cje.ustb.edu.cn/article/doi/10.13374/j.issn2095-9389.2024.05.05.002
work_keys_str_mv AT yilinmei obstacleavoidanceandformationcontrolofmultipleunmannedvehiclesincomplexenvironmentsbasedonartificialpotentialfieldmethod
AT likuncui obstacleavoidanceandformationcontrolofmultipleunmannedvehiclesincomplexenvironmentsbasedonartificialpotentialfieldmethod
AT xueyanhu obstacleavoidanceandformationcontrolofmultipleunmannedvehiclesincomplexenvironmentsbasedonartificialpotentialfieldmethod
AT guangqihu obstacleavoidanceandformationcontrolofmultipleunmannedvehiclesincomplexenvironmentsbasedonartificialpotentialfieldmethod
AT haowang obstacleavoidanceandformationcontrolofmultipleunmannedvehiclesincomplexenvironmentsbasedonartificialpotentialfieldmethod