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- Title
Event-triggered self-learning-based tracking control for nonlinear constrained-input systems with uncertain disturbances.
- Authors
Peng, Binbin; Cui, Xiaohong; Zhou, Kun
- Abstract
In this paper, an online event-triggered self-learning scheme based on adaptive dynamic programming (ADP) is developed to address tracking control design for nonlinear systems with constrained input and uncertain disturbance. Firstly, the value function with non-quadratic function is defined for the augmented nominal system, and the constrained robust tracking problem is equivalent to the optimal control for solving the tracking event-triggered Hamilton–Jacobi–Bellman (ETHJB) equation. Then, a single-critic network is developed to obtain the value function and control law related to the solution of the tracking ETHJB equation, greatly reducing approximation errors and computational costs. To alleviate the requirement for the entire state sampling, we propose a triggering rule that ensures system stability while limiting control updates. Theoretical proof demonstrates that the tracking state of the closed-loop system and the weight approximation error of the neural network are uniformly ultimately bounded (UUB). Finally, two examples are provided to validate the availability of the proposed scheme.
- Subjects
NONLINEAR systems; UNCERTAIN systems; ADAPTIVE control systems; HAMILTON-Jacobi-Bellman equation; DYNAMIC programming; TRACKING algorithms; APPROXIMATION error; CLOSED loop systems
- Publication
Neural Computing & Applications, 2024, Vol 36, Issue 13, p7007
- ISSN
0941-0643
- Publication type
Article
- DOI
10.1007/s00521-024-09442-2