1. Dynamic learning from adaptive neural control for full-state constrained strict-feedback nonlinear systems.
- Author
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Yang, Qinchen, Zhang, Fukai, Sun, Qinghua, and Wang, Cong
- Subjects
- *
ADAPTIVE control systems , *NONLINEAR systems , *TIME-varying systems , *LINEAR systems , *EXPONENTIAL stability , *PSYCHOLOGICAL feedback , *REINFORCEMENT learning - Abstract
This study focuses on the learning and control issues of strict-feedback systems with full-state constraints. To achieve learning capability under constraints, transformation mapping is utilized to convert the original system with full-state constraints into a quasi-pure-feedback unconstrained system. Utilizing the system transformation technique, only a single neural network (NN) is required to identify the unknown dynamics within the transformed system. Combining the dynamic surface control design, a novel adaptive neural control scheme is developed to ensure that all closed-loop signals are uniformly bounded, and every system state remains within the predefined constraint range. In addition, the precise convergence of NN weights is further transformed into an exponential stability problem for a category of linear time-varying systems under persistent excitation conditions. Subsequently, the converged NN weights are efficiently stored and utilized to create a learning controller to achieve better control performance while abiding by the full-state constraints. The viability of this control strategy is demonstrated via simulations. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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