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Data-driven qualitative and model-based quantitative approaches to fault diagnosis.

机译:基于数据的定性和基于模型的定量方法进行故障诊断。

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摘要

Abnormal Situation Management (ASM) and Process Hazards Analysis (PHA) are two tasks aimed at improving the design and performance of a process, while ensuring safety of people and property involved and addressing environmental, occupational safety and health related concerns. ASM deals with timely detection and diagnosis of faults, situation assessment and countermeasure planning. PHA is concerned with safety issues during design/modifications stages. The problem of fault diagnosis is made considerably difficult by the scale and complexity of modern operations, and as such, there is considerable incentive to develop intelligent systems that assist the operator in making informed decisions and taking actions quickly. In this work, we look at two diagnostic methodologies: Qualitative Trend Analysis (QTA), a data-driven qualitative technique and Observers a model-based quantitative method.;QTA aims to utilize the trend signatures in the measurements arising from malfunctions to reason about process behavior. The first step of feature-extraction deals with adaptive identification of important trends from real-time noisy data followed by feature-classification maps the features to the process states. We present a novel QTA technique based on interval-halving to extract trends followed by fuzzy-inferencing for trend-to-state mapping. The first stage effectively addresses the issue of time-scale trend identification and the second deals with the inherent uncertainty in these features. While QTA provides for qualitative trend-based temporal reasoning, it is by design data-driven and, thus, restricted in its capability. As such, the other area of focus is the model-based quantitative approach, in particular observer-based diagnosis which exploits the analytical redundancy inherent in a process model. We evaluate the efficacy of a linear, an extended linear and a nonlinear observer in diagnosing multiple faults. Finally, we note that the inherent objectives in ASM and PHA are very similar i.e., to identify hazards, to avoid/mitigate them and plan for emergencies. The PHA results contain valuable cause-consequence information, safeguards and other operability issues from which ASM can potentially benefit. To this end, an integrated framework combining both these tasks in a synergistic manner is proposed.
机译:异常情况管理(ASM)和过程危害分析(PHA)是两项任务,旨在改善过程的设计和性能,同时确保所涉人员和财产的安全,并解决与环境,职业安全和健康相关的问题。 ASM负责及时发现和诊断故障,评估情况并制定对策计划。 PHA在设计/修改阶段关注安全问题。由于现代操作的规模和复杂性,故障诊断的问题变得相当困难,因此,有很大的动机来开发智能系统,以帮助操作员做出明智的决定并迅速采取行动。在这项工作中,我们着眼于两种诊断方法:定性趋势分析(QTA)(一种数据驱动的定性技术)和观察者一种基于模型的定量方法。; QTA的目的是在由于故障而引起的测量中利用趋势特征进行推理。过程行为。特征提取的第一步是从实时噪声数据中自适应识别重要趋势,然后进行特征分类,将特征映射到过程状态。我们提出一种基于间隔减半的新颖QTA技术,以提取趋势,然后进行趋势到状态映射的模糊推理。第一个阶段有效地解决了时标趋势识别的问题,第二个阶段处理了这些功能固有的不确定性。虽然QTA提供基于定性趋势的时间推理,但它是由设计驱动数据驱动的,因此,其功能受到限制。因此,另一个重点领域是基于模型的定量方法,特别是基于观察者的诊断,它利用了过程模型中固有的分析冗余。我们评估了线性,扩展线性和非线性观测器在诊断多个故障中的功效。最后,我们注意到,ASM和PHA的内在目标非常相似,即识别危险,避免/减轻危险并计划紧急情况。 PHA结果包含有价值的因果信息,安全措施以及ASM可能从中受益的其他可操作性问题。为此,提出了以协同方式结合这两个任务的集成框架。

著录项

  • 作者

    Dash, Sourabh Kumar.;

  • 作者单位

    Purdue University.;

  • 授予单位 Purdue University.;
  • 学科 Engineering Chemical.;Engineering System Science.
  • 学位 Ph.D.
  • 年度 2001
  • 页码 194 p.
  • 总页数 194
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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