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- Title
Event‐triggered adaptive neural network control design for stochastic nonlinear systems with output constraint.
- Authors
Shen, Fei; Wang, Xinjun; Pan, Xinxin
- Abstract
Summary: This paper is concerned with the adaptive neural network event‐triggered control (ETC) problem for stochastic nonlinear systems with output constraint. The influence of stochastic disturbance inevitably exists in many practical systems, which leads to system instability. Meanwhile, a novel tan type barrier Lyapunov function (Tan‐BLF) structure is proposed to deal with the constraint requirements of stochastic systems. In the sense of probability, the output constraints will not be violated during the operation of the system. In addition, the ETC strategy is adopted to reduce the burden of communication. The asymptotic stability of the closed‐loop system is guaranteed without violating output constraints. Meanwhile, the tracking error converges to a small region of the origin. Two simulations results demonstrate the effectiveness of theoretical analysis.
- Subjects
STOCHASTIC systems; NONLINEAR systems; ADAPTIVE control systems; LYAPUNOV functions; CLOSED loop systems; BACKSTEPPING control method
- Publication
International Journal of Adaptive Control & Signal Processing, 2024, Vol 38, Issue 1, p342
- ISSN
0890-6327
- Publication type
Article
- DOI
10.1002/acs.3705