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Fault diagnosis using dynamic trend analysis: A review and recent developments

机译:使用动态趋势分析进行故障诊断:回顾与最新进展

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Dynamic trend analysis is an important technique for fault detection and diagnosis. Trend analysis involves hierarchical representation of signal trends, extraction of the trends, and their comparison (estimation of similarity) to infer the state of the process. In this paper, an overview of some of the existing methods for trend extraction and similarity estimation is presented. A novel interval-halving method for trend extraction and a fuzzy-matching-based method for similarity estimation and inferencing are also presented. The effectiveness of the interval halving and trend matching is shown through simulation studies on the fault diagnosis of the Tennessee Eastman process. Industrial experiences on the application of trend analysis technique for fault detection and diagnosis is also presented followed by a discussion on outstanding issues and solution approaches.
机译:动态趋势分析是故障检测和诊断的重要技术。趋势分析涉及信号趋势的分层表示,趋势的提取以及它们的比较(相似性的估计),以推断过程的状态。本文概述了一些现有的趋势提取和相似性估计方法。还提出了一种新的趋势提取间隔减半方法以及基于模糊匹配的相似度估计和推理方法。通过对田纳西州伊士曼过程故障诊断的仿真研究,表明了间隔减半和趋势匹配的有效性。还介绍了将趋势分析技术应用于故障检测和诊断的行业经验,然后讨论了突出的问题和解决方法。

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