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Improved Fault Diagnosis In Multivariate Systems Using Regression-based Reconstruction

机译:使用基于回归的重构改进多元系统中的故障诊断

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Subspace monitoring has recently been proposed as a condition monitoring tool that requires considerably fewer variables to be analysed compared to dynamic principal component analysis (PCA). This paper analyses subspace monitoring in identifying and isolating fault conditions, which reveals that existing work suffers from inherent limitations if complex fault scenarios arise. Based on the assumption that the fault signature is deterministic while the monitored variables are stochastic, the paper introduces a regression-based reconstruction technique to overcome these limitations. The utility of the proposed fault identification and isolation method is shown using a simulation example and the analysis of experimental data from an industrial reactive distillation unit.
机译:与动态主成分分析(PCA)相比,最近已提出子空间监视作为一种状态监视工具,它需要分析的变量要少得多。本文分析了在识别和隔离故障条件中进行子空间监视的方法,该方法揭示了如果出现复杂的故障情况,现有工作会受到固有限制。基于故障特征是确定性而监视变量是随机的这一假设,本文介绍了一种基于回归的重构技术来克服这些局限性。通过仿真示例和对来自工业反应蒸馏装置的实验数据进行分析,展示了所提出的故障识别和隔离方法的实用性。

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