Adaptive neural output-feedback control for a class of output-constrained switched stochastic nonlinear systems

INTERNATIONAL JOURNAL OF SYSTEMS SCIENCE(2021)

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摘要
In this paper, a neural network-based adaptive output-feedback control problem is investigated for a class of output-constrained switched stochastic nonlinear systems. By introducing nonlinear mapping, the asymmetric and symmetric output constrained stochastic nonlinear system is transformed into a new system without any constraint. It is the first time that a switching system is used to convert symmetric and asymmetric output constraints in the same system. An adaptive neural output-feedback controller is developed based on the backstepping technique. A state observer is designed to estimate the unmeasurable system state signals. An adaptive controller is designed to ensure that the output tracking error converges to a small region of the origin. The control scheme ensures that all signals in the closed-loop systems are semi-global uniformly ultimately bounded. Results of simulation cases are presented to prove the effectiveness of the theoretical analysis.
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关键词
Output-feedback control, output constraints, stochastic disturbances, nonlinear mapping, switched stochastic systems, neural networks
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