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Nonlinear robust observers for simultaneous state and fault estimation.

机译:用于状态和故障同时估计的非线性鲁棒观测器。

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摘要

A fault in the system operation is deemed to occur when the system practically experiences an abnormal condition, such as a malfunction in the actuators/sensors. This situation is happening very often in many control process such as: Chemical processes, Jet engine control, flight control, Robotics, temperature control, and etc. Faults can cause catastrophic damages to control systems. Therefore, reliability is one of the key requirements for process industries. Since many process control loops are utilized, the fault-free operation of these control loops is strictly required. For this purpose, effective model based Fault Detection and Isolation (FDI) has to be developed. On the other hand, effective control and monitoring of a system requires accurate information of internal behavior of the system. This internal behavior can be analyzed by system's states. Practically, in many real systems, state space variables are not fully available for measurements, or it is not practical to measure all of them, or it is too expensive to measure all these state space variables. Thus, one is faced with the problem of estimating system's state space variables. This can be done by constructing another dynamical system called state observer.;It is well known that two promising control strategies to cope with vastly uncertain control processes are Hinfinity Control and Sliding Mode Control. The robustness and simple implementation of these two control theories introduce them as strong practical control methods. Sliding mode observers are very successful to deal with uncertain faulty systems. Furthermore, in Robust FDI, the main objective is to design residuals that can distinguish faults from disturbances/uncertainties by reducing the effect of disturbances. However, in this thesis, we go one step further and we propose Robust Fault Reconstruction (RFR) by integrating Hinfinity filtering and Sliding Mode Control. It is also shown how adaptive control can improve the robustness of the observer based RFR by assuming that there is no information on the bound of a fault and nevertheless the observer can still reconstruct the fault effectively.;Another open problem in the context of FDI and RFR is due to systems with multiple faults at different system's components since it is often the case where actuators and also sensors suffer from faults during the course of the system's operation. Both actuators and sensors can suffer from faults either alone, at separate times or simultaneously. In this case, detection and reconstruction of all faults is highly important. The co-existence of unknown fault at both some sensor(s) and actuator(s) has not been addressed in any earlier design of fault reconstruction schemes. Thus, in this Thesis, inspired by the theory of singular systems, we aim at solving this open problem. Unknown Input Observers (UIOs) for estimation of unknown input and sensor fault are also studied by proposing a new UIO structure. The application of the proposed UIO for chaotic communication is also addressed. The class of system which will be considered throughout this thesis is Lipschitz nonlinear systems with fault and uncertainty. The reason behind focusing on Lipschitz system is that Lipschitz systems constitute a very important and wide class, since any nonlinear system with continuously differentiable nonlinearities can be locally expressed in this form. As a conclusion, we design novel observers (estimators) which benefits from the following main features: (1) are robust and insensitive to faults; (2) minimize the effect of disturbances on the state and fault estimation; (3) are able of detecting unknown behavior-type faults via adaptive gain adjustment; (4) can simultaneously estimate sensor(s) and actuator(s) fau (5) have sensor fault reconstruction ability via the use of a reduced-order UIO.;The two critical problems stated above have motivated significant research work in the area of robust state and fault estimation. Fault reconstruction and estimation is regarded as a stronger extension to FDI since accurate fault estimation automatically implies fault detection. Fault reconstruction is excellent for directly detecting and isolating the malfunctions within a system by reviling which sensor or actuator is faulty and is useful for diagnosing incipient and small faults. Moreover, Fault reconstruction finds solid applications in Fault Tolerant Control Systems (FTC). Therefore, in this PhD thesis, we restrict our attention to design observers (estimators) that can simultaneously estimate the system states and faults. It is worth mentioning that both faults and disturbances considerably affect the state observation (estimation) and designing a robust observer which is insensitive to faults and disturbances is of great interest for achieving an accurate state estimation.
机译:当系统实际上遇到异常情况(例如致动器/传感器故障)时,就认为发生了系统操作故障。这种情况在许多控制过程中经常发生,例如:化学过程,喷气发动机控制,飞行控制,机器人技术,温度控制等。故障可能会对控制系统造成灾难性的损害。因此,可靠性是过程工业的关键要求之一。由于利用了许多过程控制回路,因此严格要求这些控制回路的无故障运行。为此,必须开发基于模型的有效故障检测和隔离(FDI)。另一方面,对系统的有效控制和监视需要系统内部行为的准确信息。可以通过系统状态分析此内部行为。实际上,在许多实际系统中,状态空间变量不能完全用于测量,或者测量所有变量都不可行,或者测量所有这些状态空间太昂贵。因此,面临着估计系统状态空间变量的问题。这可以通过构造另一个称为状态观察器的动力学系统来完成。众所周知,应对无限不确定的控制过程的两种有希望的控制策略是Hinfinity控制和滑模控制。这两种控制理论的鲁棒性和简单实现将它们介绍为强大的实用控制方法。滑模观测器在处理不确定的故障系统方面非常成功。此外,在稳健的FDI中,主要目标是设计残差,以通过减少干扰的影响将故障与干扰/不确定性区分开。然而,在本文中,我们又走了一步,并通过集成Hinfinity滤波和滑模控制提出了鲁棒故障重构(RFR)。还显示了自适应控制如何通过假设不存在关于故障边界的信息来提高基于观察者的RFR的鲁棒性,但是观察者仍可以有效地重构故障。 RFR是由于系统在不同系统组件上存在多个故障而引起的,因为在系统运行过程中,执行器和传感器经常会出现故障。致动器和传感器都可能单独,在不同时间或同时遭受故障。在这种情况下,检测和重建所有故障非常重要。在故障重建方案的任何较早设计中,尚未解决在某些传感器和执行器处未知故障的共存问题。因此,在本论文中,受奇异系统理论的启发,我们旨在解决这一开放性问题。还通过提出一种新的UIO结构来研究用于估计未知输入和传感器故障的未知输入观察者(UIO)。还讨论了所提出的UIO在混沌通信中的应用。在整个论文中将考虑的一类系统是具有故障和不确定性的Lipschitz非线性系统。专注于Lipschitz系统的原因是Lipschitz系统构成了一个非常重要且广泛的类别,因为具有连续可微的非线性的任何非线性系统都可以以这种形式局部表示。结论是,我们设计了新颖的观测器(估计器),该观测器具有以下主要特征:(1)鲁棒且对故障不敏感; (2)最小化干扰对状态和故障估计的影响; (3)能够通过自适应增益调整来检测未知的行为类型的故障; (4)可以同时估计传感器和致动器的故障; (5)通过使用降阶UIO具有传感器故障重建能力。上面提到的两个关键问题在鲁棒状态和故障估计领域引起了重要的研究工作。故障重建和估计被认为是对FDI的更强扩展,因为准确的故障估计会自动暗示故障检测。通过重建哪个传感器或执行器有故障,故障重建非常适合直接检测和隔离系统内的故障,对于诊断初期和小故障非常有用。此外,故障重建在容错控制系统(FTC)中找到了坚实的应用。因此,在本博士论文中,我们将注意力集中在可以同时估计系统状态和故障的设计观察者(估计器)上。值得一提的是,故障和干扰都极大地影响状态观察(估计),设计对故障和干扰不敏感的鲁棒观测器对于实现准确的状态估计非常重要。

著录项

  • 作者

    Raoufi, Reza.;

  • 作者单位

    University of Alberta (Canada).;

  • 授予单位 University of Alberta (Canada).;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 144 p.
  • 总页数 144
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 老年病学;
  • 关键词

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