Anti-disturbance predictive control for path tracking of unmanned agricultural vehicles based on safety distance

To enhance the path tracking performance of unmanned agricultural vehicles in complex working scenarios with multiple obstacles, this paper proposes an anti-disturbance predictive control scheme based on safe distance. This control scheme leverages the autonomous learning capabilities of predictive...

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Main Authors: HUANG Zhenzhen, SUN Jinlin, DING Shihong
Format: Article
Language:zho
Published: POSTS&TELECOM PRESS Co., LTD 2025-03-01
Series:智能科学与技术学报
Subjects:
Online Access:http://www.cjist.com.cn/thesisDetails#10.11959/j.issn.2096-6652.202508
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author HUANG Zhenzhen
SUN Jinlin
DING Shihong
author_facet HUANG Zhenzhen
SUN Jinlin
DING Shihong
author_sort HUANG Zhenzhen
collection DOAJ
description To enhance the path tracking performance of unmanned agricultural vehicles in complex working scenarios with multiple obstacles, this paper proposes an anti-disturbance predictive control scheme based on safe distance. This control scheme leverages the autonomous learning capabilities of predictive control to achieve efficient obstacle avoidance maneuvers for unmanned agricultural vehicles in complex operational scenarios through interaction with the working environment. Initially, an extended state observer is designed to accurately estimate the unknown disturbance within the agricultural vehicle system and incorporate it into the nonlinear predictive model, thereby improving the precision of state prediction and disturbance rejection in the path tracking control system. Subsequently, an automatic optimization algorithm for the reference point of the agricultural vehicle is designed to prevent excessive steering during path tracking. Then, a novel obstacle avoidance penalty term is constructed based on logarithmic function scaling to ensure that the agricultural vehicle maintains a preset safe distance from multiple obstacles during path tracking. Building on this, the cost function is integrated with lateral offset and heading offset information, combined with the obstacle avoidance penalty function, and an anti-disturbance model predictive control scheme is constructed by solving the nonlinear constrained optimization problem online. Simulation results demonstrate that the control scheme proposed in this paper has superior path tracking accuracy and can effectively avoid obstacles while adapting to different safe distance settings and obstacle positions.
format Article
id doaj-art-7d7e6563bea94dfb87eae10c8fe60955
institution Kabale University
issn 2096-6652
language zho
publishDate 2025-03-01
publisher POSTS&TELECOM PRESS Co., LTD
record_format Article
series 智能科学与技术学报
spelling doaj-art-7d7e6563bea94dfb87eae10c8fe609552025-08-20T03:45:30ZzhoPOSTS&TELECOM PRESS Co., LTD智能科学与技术学报2096-66522025-03-017869790694124Anti-disturbance predictive control for path tracking of unmanned agricultural vehicles based on safety distanceHUANG ZhenzhenSUN JinlinDING ShihongTo enhance the path tracking performance of unmanned agricultural vehicles in complex working scenarios with multiple obstacles, this paper proposes an anti-disturbance predictive control scheme based on safe distance. This control scheme leverages the autonomous learning capabilities of predictive control to achieve efficient obstacle avoidance maneuvers for unmanned agricultural vehicles in complex operational scenarios through interaction with the working environment. Initially, an extended state observer is designed to accurately estimate the unknown disturbance within the agricultural vehicle system and incorporate it into the nonlinear predictive model, thereby improving the precision of state prediction and disturbance rejection in the path tracking control system. Subsequently, an automatic optimization algorithm for the reference point of the agricultural vehicle is designed to prevent excessive steering during path tracking. Then, a novel obstacle avoidance penalty term is constructed based on logarithmic function scaling to ensure that the agricultural vehicle maintains a preset safe distance from multiple obstacles during path tracking. Building on this, the cost function is integrated with lateral offset and heading offset information, combined with the obstacle avoidance penalty function, and an anti-disturbance model predictive control scheme is constructed by solving the nonlinear constrained optimization problem online. Simulation results demonstrate that the control scheme proposed in this paper has superior path tracking accuracy and can effectively avoid obstacles while adapting to different safe distance settings and obstacle positions.http://www.cjist.com.cn/thesisDetails#10.11959/j.issn.2096-6652.202508unmanned agricultural vehiclepath tracking controlmodel predictive controlobstacle avoidance
spellingShingle HUANG Zhenzhen
SUN Jinlin
DING Shihong
Anti-disturbance predictive control for path tracking of unmanned agricultural vehicles based on safety distance
智能科学与技术学报
unmanned agricultural vehicle
path tracking control
model predictive control
obstacle avoidance
title Anti-disturbance predictive control for path tracking of unmanned agricultural vehicles based on safety distance
title_full Anti-disturbance predictive control for path tracking of unmanned agricultural vehicles based on safety distance
title_fullStr Anti-disturbance predictive control for path tracking of unmanned agricultural vehicles based on safety distance
title_full_unstemmed Anti-disturbance predictive control for path tracking of unmanned agricultural vehicles based on safety distance
title_short Anti-disturbance predictive control for path tracking of unmanned agricultural vehicles based on safety distance
title_sort anti disturbance predictive control for path tracking of unmanned agricultural vehicles based on safety distance
topic unmanned agricultural vehicle
path tracking control
model predictive control
obstacle avoidance
url http://www.cjist.com.cn/thesisDetails#10.11959/j.issn.2096-6652.202508
work_keys_str_mv AT huangzhenzhen antidisturbancepredictivecontrolforpathtrackingofunmannedagriculturalvehiclesbasedonsafetydistance
AT sunjinlin antidisturbancepredictivecontrolforpathtrackingofunmannedagriculturalvehiclesbasedonsafetydistance
AT dingshihong antidisturbancepredictivecontrolforpathtrackingofunmannedagriculturalvehiclesbasedonsafetydistance