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Robust model-based fault diagnosis for chemical process systems.

机译:基于稳健模型的化学过程系统故障诊断。

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Fault detection and diagnosis have gained central importance in the chemical process industries over the past decade. This is due to several reasons, one of them being that copious amount of data is available from a large number of sensors in process plants. Moreover, since industrial processes operate in closed loop with appropriate output feedback to attain certain performance objectives, instrument faults have a direct effect on the overall performance of the automation system. Extracting essential information about the state of the system and processing the measurements for detecting, discriminating, and identifying abnormal readings are important tasks of a fault diagnosis system.; The goal of this dissertation is to develop such fault diagnosis systems, which use limited information about the process model to robustly detect, discriminate, and reconstruct instrumentation faults. Broadly, the proposed method consists of a novel nonlinear state and parameter estimator coupled with a fault detection, discrimination, and reconstruction system.; The first part of this dissertation focuses on designing fault diagnosis systems that not only perform fault detection and isolation but also estimate the shape and size of the unknown instrument faults. This notion is extended to nonlinear processes whose structure is known but the parameters of the process are a priori uncertain and bounded. Since the uncertainty in the process model and instrument fault detection interact with each other, a novel two-time scale procedure is adopted to render overall fault diagnosis. Further, some techniques to enhance the convergence properties of the proposed state and parameter estimator are presented.; The remaining part of the dissertation extends the proposed model-based fault diagnosis methodology to processes for which first principles modeling is either expensive or infeasible. This is achieved by using an empirical model identification technique called subspace identification for state-space characterization of the process.; Finally the proposed methodology for fault diagnosis has been applied in numerical simulations to a non-isothermal CSTR (continuous stirred tank reactor), an industrial melter process, and a debutanizer plant.
机译:在过去的十年中,故障检测和诊断在化学过程工业中已变得至关重要。这是由于多种原因,其中之一是可从加工厂中的大量传感器获得大量数据。此外,由于工业过程以适当的输出反馈在闭环中运行以达到某些性能目标,因此仪器故障会直接影响自动化系统的整体性能。提取有关系统状态的基本信息并处理测量值以检测,区分和识别异常读数是故障诊断系统的重要任务。本文的目的是开发这样的故障诊断系统,该系统使用有关过程模型的有限信息来可靠地检测,区分和重建仪器故障。广义上讲,该方法由新颖的非线性状态和参数估计器与故障检测,判别和重构系统组成。本文的第一部分着重于设计故障诊断系统,该系统不仅执行故障检测和隔离,而且估计未知仪器故障的形状和大小。该概念被扩展到其结构已知的非线性过程,但是过程的参数是先验不确定和有界的。由于过程模型中的不确定性和仪器故障检测相互影响,因此采用了新颖的二次标度程序来进行整体故障诊断。此外,提出了一些增强所提出的状态和参数估计器的收敛性的技术。论文的其余部分将所提出的基于模型的故障诊断方法扩展到第一原理建模昂贵或不可行的过程。这是通过使用称为子空间识别的经验模型识别技术对过程的状态空间进行表征来实现的。最后,所提出的故障诊断方法已在数值模拟中应用于非等温CSTR(连续搅拌釜反应器),工业熔炉工艺和初丁烷化装置。

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