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Intelligent Process Fault Diagnosis for Nonlinear Systems with Uncertain Plant Model via Extended State Observer and Soft Computing

机译:基于扩展状态观测器和软计算的不确定工厂模型非线性系统智能过程故障诊断。

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There have been many studies on observer-based fault detection and isolation (FDI), such as using unknown input observer and generalized observer. Most of them require a nominal mathematical model of the system. Unlike sensor faults, actuator faults and process faults greatly affect the system dynamics. This paper presents a new process fault diagnosis technique without exact knowledge of the plant model via Extended State Observer (ESO) and soft computing. The ESO’s augmented or extended state is used to compute the system dynamics in real time, thereby provides foundation for real-time process fault detection. Based on the input and output data, the ESO identifies the un-modeled or incorrectly modeled dynamics combined with unknown external disturbances in real time and provides vital information for detecting faults with only partial information of the plant, which cannot be easily accomplished with any existing methods. Another advantage of the ESO is its simplicity in tuning only a single parameter. Without the knowledge of the exact plant model, fuzzy inference was developed to isolate faults. A strongly coupled three-tank nonlinear dynamic system was chosen as a case study. In a typical dynamic system, a process fault such as pipe blockage is likely incipient, which requires degree of fault identification at all time. Neural networks were trained to identify faults and also instantly determine degree of fault. The simulation results indicate that the proposed FDI technique effectively detected and isolated faults and also accurately determine the degree of fault. Soft computing (i.e. fuzzy logic and neural networks) makes fault diagnosis intelligent and fast because it provides intuitive logic to the system and real-time input-output mapping.
机译:关于基于观察者的故障检测和隔离(FDI)已有许多研究,例如使用未知输入观察者和广义观察者。它们中的大多数都需要系统的名义数学模型。与传感器故障不同,执行器故障和过程故障会极大地影响系统动力学。本文提出了一种新的过程故障诊断技术,该技术无需通过扩展状态观察器(ESO)和软计算即可精确了解工厂模型。 ESO的增强或扩展状态用于实时计算系统动态,从而为实时过程故障检测提供基础。 ESO根据输入和输出数据,实时识别未建模或建模错误的动力学以及未知的外部干扰,并仅通过部分工厂信息即可提供用于检测故障的重要信息,而现有任何现有信息都无法轻松实现方法。 ESO的另一个优点是仅调整单个参数的简便性。在不了解确切工厂模型的情况下,开发了模糊推理来隔离故障。选择了一个强耦合的三缸非线性动力学系统作为案例研究。在典型的动态系统中,诸如管道堵塞之类的过程故障可能很容易发生,这始终需要确定故障的程度。对神经网络进行了训练,以识别故障并立即确定故障程度。仿真结果表明,所提出的FDI技术可以有效地检测和隔离故障,并且可以准确地确定故障程度。软计算(即模糊逻辑和神经网络)使故障诊断变得智能且快速,因为它为系统提供了直观的逻辑以及实时的输入输出映射。

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