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Main Authors: Chen, Yanbo, Tan, Yunzhe, Wang, Yaojia, Xu, Zhengzhe, Tan, Junbo, Wang, Xueqian
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.15607
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author Chen, Yanbo
Tan, Yunzhe
Wang, Yaojia
Xu, Zhengzhe
Tan, Junbo
Wang, Xueqian
author_facet Chen, Yanbo
Tan, Yunzhe
Wang, Yaojia
Xu, Zhengzhe
Tan, Junbo
Wang, Xueqian
contents Autonomous navigation of vehicle-trailer systems is crucial in environments like airports, supermarkets, and concert venues, where various types of trailers are needed to navigate with different payloads and conditions. However, accurately modeling such systems remains challenging, especially for trailers with castor wheels. In this work, we propose a novel universal vehicle-trailer navigation system that integrates a hybrid nominal kinematic model--combining classical nonholonomic constraints for vehicles and neural network-based trailer kinematics--with a lightweight online residual learning module to correct real-time modeling discrepancies and disturbances. Additionally, we develop a model predictive control framework with a weighted model combination strategy that improves long-horizon prediction accuracy and ensures safer motion planning. Our approach is validated through extensive real-world experiments involving multiple trailer types and varying payload conditions, demonstrating robust performance without manual tuning or trailer-specific calibration.
format Preprint
id arxiv_https___arxiv_org_abs_2507_15607
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Universal Vehicle-Trailer Navigation System with Neural Kinematics and Online Residual Learning
Chen, Yanbo
Tan, Yunzhe
Wang, Yaojia
Xu, Zhengzhe
Tan, Junbo
Wang, Xueqian
Robotics
Autonomous navigation of vehicle-trailer systems is crucial in environments like airports, supermarkets, and concert venues, where various types of trailers are needed to navigate with different payloads and conditions. However, accurately modeling such systems remains challenging, especially for trailers with castor wheels. In this work, we propose a novel universal vehicle-trailer navigation system that integrates a hybrid nominal kinematic model--combining classical nonholonomic constraints for vehicles and neural network-based trailer kinematics--with a lightweight online residual learning module to correct real-time modeling discrepancies and disturbances. Additionally, we develop a model predictive control framework with a weighted model combination strategy that improves long-horizon prediction accuracy and ensures safer motion planning. Our approach is validated through extensive real-world experiments involving multiple trailer types and varying payload conditions, demonstrating robust performance without manual tuning or trailer-specific calibration.
title A Universal Vehicle-Trailer Navigation System with Neural Kinematics and Online Residual Learning
topic Robotics
url https://arxiv.org/abs/2507.15607