Robust learning‐based lateral tracking control for autonomous driving with input constraints

This work investigates the robust lateral tracking control problem of autonomous vehicles subject to unmodeled system uncertainties, external disturbances as well as input constraints that commonly exist in the vehicle dynamics. The tracking controller design under such uncertain environments is cha...

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Bibliographic Details
Published inInternational journal of robust and nonlinear control Vol. 33; no. 7; pp. 4228 - 4244
Main Authors Li, Xuefang, Li, Hongbo, Meng, Deyuan, Feng, Guodong
Format Journal Article
LanguageEnglish
Published Bognor Regis Wiley Subscription Services, Inc 10.05.2023
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Summary:This work investigates the robust lateral tracking control problem of autonomous vehicles subject to unmodeled system uncertainties, external disturbances as well as input constraints that commonly exist in the vehicle dynamics. The tracking controller design under such uncertain environments is challenging due to the under‐actuated characteristics of the vehicle dynamics. Targeting at this issue, a nonlinear vehicle model is firstly established and transformed into a novel parametric model to facilitate the controller design. A robust adaptive learning control (RALC) approach is then proposed based on the parametric vehicle model, where an input‐dependent auxiliary system is employed to compensate the influence of the input constraints. The convergence of the tracking errors is rigorously analyzed based on the framework of composite energy function. The proposed RALC scheme is proven to be able to achieve an impressive path tracking performance under perturbed and constrained scenarios. Moreover, the proposed technique in tackling the under‐actuated dynamics is novel that can be applied to deal with other generic non‐square systems. The proposed controller is validated with case studies under various conditions.
Bibliography:Funding information
National Natural Science Foundation of China, Grant/Award Numbers: 61873013; 61922007; 62003376; Natural Science Foundation of Guangdong Province, Grant/Award Number: 2022A1515010881
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ISSN:1049-8923
1099-1239
DOI:10.1002/rnc.6243