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Fault diagnosis in nonlinear systems using learning and sliding mode approaches with applications for satellite control systems.

机译:使用学习和滑模方法的非线性系统中的故障诊断及其在卫星控制系统中的应用。

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摘要

In this thesis, model based fault detection, isolation, and estimation problem in several classes of nonlinear systems is studied using sliding mode and learning approaches. First, a fault diagnosis scheme using a bank of repetitive learning observers is presented. The diagnostic observers are established in a generalized observer scheme, and the observer inputs are repetitively updated using the output estimation error in a proportional-integral structure.;Next, a framework for robust fault diagnosis using sliding mode and learning approaches is proposed to deal with various types of faults in a class of nonlinear systems with triangular input form. In the designed diagnostic observers, first order and second order sliding modes are used respectively, to achieve robust state estimation in the presence of uncertainties, and additional online estimators are established to characterize the faults. In order to guarantee that the sliding mode is able to distinguish the system uncertainties from the faults, two iterative adaptive laws are used to update the sliding mode switching gains. Moreover, different online fault estimators are developed using neural state space models, iterative learning algorithms, and wavelet networks.;Another class of nonlinear systems where an unmeasurable part of state can be described as a nonlinear function of the output and its derivatives is considered next. Accordingly, a class of fault diagnosis schemes using high order sliding mode differentiators (HOSMDs) and online estimators are proposed, where neural adaptive estimators and iterative neuron PID estimators are designed. Additionally, a fault diagnosis scheme using HOSMDs and neural networks based uncertainty observers is designed in order to achieve a better performance in robust fault detection. If the uncertainties can be accurately estimated, the generated diagnostic residual is more sensitive to the onset of faults.;Finally, a fault diagnosis scheme using Takagi-Sugeno (TS) fuzzy models, neural networks, and sliding mode is developed. The availability of TS fuzzy models makes this fault diagnosis scheme applicable to a wider class of nonlinear systems. The proposed fault diagnosis schemes are applied to several types of satellite control systems, and the simulation results demonstrate their performance.;Keywords. Fault Diagnosis; Observer; Sliding Mode; Learning; Fuzzy Model; Neural Networks; Satellite Control Systems.
机译:本文采用滑模和学习方法研究了几类非线性系统中基于模型的故障检测,隔离和估计问题。首先,提出了使用一堆重复学习观察者的故障诊断方案。诊断观测器是在广义观测器方案中建立的,并使用输出-估计误差按比例-积分结构重复更新观测器输入。接下来,提出了一种使用滑动模式和学习方法进行鲁棒故障诊断的框架一类具有三角输入形式的非线性系统中的各种类型的故障。在设计的诊断观测器中,分别使用一阶滑模和二阶滑模来实现存在不确定性的鲁棒状态估计,并建立了其他在线估计器来表征故障。为了保证滑模能够将系统不确定性与故障区分开来,使用两个迭代自适应律来更新滑模切换增益。此外,使用神经状态空间模型,迭代学习算法和小波网络开发了不同的在线故障估计器;另一类非线性系统,其中状态的不可测量部分可以描述为输出及其衍生物的非线性函数。因此,提出了一类使用高阶滑模微分器和在线估计器的故障诊断方案,设计了神经自适应估计器和迭代神经元PID估计器。此外,设计了一种使用HOSMD和基于不确定性观察器的神经网络的故障诊断方案,以便在鲁棒故障检测中获得更好的性能。如果可以准确地估计不确定性,则生成的诊断残差对故障的发生更加敏感。最后,开发了使用Takagi-Sugeno(TS)模糊模型,神经网络和滑模的故障诊断方案。 TS模糊模型的可用性使该故障诊断方案适用于更广泛的非线性系统。提出的故障诊断方案已应用于多种类型的卫星控制系统,仿真结果表明了它们的性能。故障诊断;观察员滑动模式学习;模糊模型神经网络;卫星控制系统。

著录项

  • 作者

    Wu, Qing.;

  • 作者单位

    Simon Fraser University (Canada).;

  • 授予单位 Simon Fraser University (Canada).;
  • 学科 Engineering Electronics and Electrical.;Engineering System Science.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 203 p.
  • 总页数 203
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;系统科学;
  • 关键词

  • 入库时间 2022-08-17 11:39:02

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