Iterative fault tolerant control based on Stochastic Distribution

Z. Skaf, A. Al-Bayati, Hong Wang, Aiping Wang
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引用次数: 1

Abstract

A new design of a fault tolerant control (FTC)-based an adaptive, fixed-structure PI controller, with constraints on the state vector for nonlinear discrete-time system subject to stochastic non-Gaussian disturbance is studied. The objective of the reliable control algorithm scheme is to design a control signal such that the actual probability density function (PDF) of the system is made as close as possible to a desired PDF, and make the tracking performance converge to zero, not only when all components are functional but also in case of admissible faults. A Linear Matrix Inequality (LMI)-based FTC method is presented to ensure that the fault can be estimated and compensated for. A radial basis function (RBF) neural network is used to approximate the output PDF of the system. Thus, the aim of the output PDF control will be a RBF weight control with an adaptive tuning of the basis function parameters. The key issue here is to divide the control horizon into a number of equal time intervals called batches. Within each interval, there are a fixed number of sample points. The design procedure is divided into two main algorithms, within each batch, and between any two adjacent batches. A P-type ILC law is employed to tune the parameters of the RBF neural network so that the PDF tracking error decreases along with the batches. Sufficient conditions for the proposed fault tolerance are expressed as LMIs. An analysis of the ILC convergence is carried out. Finally, the effectiveness of the proposed method is demonstrated with an illustrated example.
基于随机分布的迭代容错控制
针对随机非高斯扰动下的非线性离散系统,研究了一种基于状态向量约束的自适应固定结构PI控制器的容错控制方法。可靠控制算法方案的目标是设计一个控制信号,使系统的实际概率密度函数(PDF)尽可能接近期望的概率密度函数,并使跟踪性能收敛于零,无论在所有组件都是功能的情况下,还是在允许故障的情况下。提出了一种基于线性矩阵不等式(LMI)的FTC方法,以保证故障的估计和补偿。采用径向基函数(RBF)神经网络逼近系统输出的PDF。因此,输出PDF控制的目标将是具有基函数参数自适应调整的RBF权值控制。这里的关键问题是将控制范围划分为许多相等的时间间隔,称为批次。在每个区间内,有固定数量的样本点。设计过程分为两个主要算法,在每个批次内,并在任意两个相邻批次之间。采用p型ILC律对RBF神经网络的参数进行调整,使PDF跟踪误差随着批次的增加而减小。提出的容错的充分条件用lmi表示。对ILC收敛性进行了分析。最后,通过算例验证了所提方法的有效性。
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