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Adaptive Neural Networks Decentralized FTC Design for Nonstrict-Feedback Nonlinear Interconnected Large-Scale Systems Against Actuator Faults

机译:针对执行器故障的非严格反馈非线性互联大型系统的自适应神经网络分散FTC设计

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摘要

The problem of active fault-tolerant control (FTC) is investigated for the large-scale nonlinear systems in nonstrict-feedback form. The nonstrict-feedback nonlinear systems considered in this paper consist of unstructured uncertainties, unmeasured states, unknown interconnected terms, and actuator faults (e.g., bias fault and gain fault). A state observer is designed to solve the unmeasurable state problem. Neural networks (NNs) are used to identify the unknown lumped nonlinear functions so that the problems of unstructured uncertainties and unknown interconnected terms can be solved. By combining the adaptive backstepping design principle with the combination Nussbaum gain function property, a novel NN adaptive output-feedback FTC approach is developed. The proposed FTC controller can guarantee that all signals in all subsystems are bounded, and the tracking errors for each subsystem converge to a small neighborhood of zero. Finally, numerical results of practical examples are presented to further demonstrate the effectiveness of the proposed control strategy.
机译:研究了非严格反馈形式的大型非线性系统的主动容错控制(FTC)问题。本文考虑的非严格反馈非线性系统包括非结构性不确定性,未测量状态,未知的互连项以及执行器故障(例如偏置故障和增益故障)。设计状态观察器以解决不可测量的状态问题。使用神经网络(NN)来识别未知的集总非线性函数,从而可以解决非结构化不确定性和未知互连项的问题。通过将自适应反推设计原理与Nussbaum增益函数特性相结合,开发了一种新的NN自适应输出反馈FTC方法。所提出的FTC控制器可以保证所有子系统中的所有信号都受到限制,并且每个子系统的跟踪误差都收敛到零附近。最后,给出了实例的数值结果,以进一步证明所提出的控制策略的有效性。

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