Reinforcement learning‐based optimized backstepping control for strict‐feedback nonlinear systems subject to external disturbances

Author:

Qin Yan1,Cao Liang2ORCID,Lu Qing3,Pan Yingnan1ORCID

Affiliation:

1. College of Control Science and Engineering Bohai University Jinzhou Liaoning China

2. College of Mathematical Sciences Bohai University Jinzhou Liaoning China

3. College of Mechanical and Electronic Engineering Nanjing Forestry University Nanjing Jiangsu China

Abstract

AbstractThis article investigates a reinforcement learning‐based optimal backstepping control strategy for strict‐feedback nonlinear systems, which contain output constraints, external disturbances and uncertain unknown dynamics. The simplified reinforcement learning algorithm with the identifier‐critic‐actor architecture is constructed in the control design to build optimal virtual and actual controllers. To compensate for the disturbance, a lemma is adopted to transform external disturbances into an unknown “bounding functions‘’, which satisfy a triangular condition. Moreover, the unknown nonlinear functions, which composed of unknown dynamics and external disturbances, approximated by neural networks. Meanwhile, in order to avoid violating output constraints, a barrier‐type Lyapunov function approach is integrated into the optimal control strategy to satisfy output constraints requirements under the framework of backstepping technique. Furthermore, the presented optimal control strategy guarantees that all signals in the closed‐loop system are semi‐globally uniformly ultimately bounded. Finally, the effectiveness of the proposed optimal control approach is performed by a numerical example.

Funder

National Natural Science Foundation of China

Publisher

Wiley

Subject

Applied Mathematics,Control and Optimization,Software,Control and Systems Engineering

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