基于PCA的传感器故障检测与隔离技术

Soraya Berbache, M. Harkat, F. Kratz
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引用次数: 2

摘要

主成分分析(PCA)由于其简单有效的特点,被认为是多元统计过程控制(MSPC)的一项基本技术,并在FDI领域得到了成功的应用。原始系统变量的线性组合产生了一组独立的潜在变量,称为主成分(PCs)。在基于PCA的传感器故障检测和诊断领域,已经建立了几种类型的监测统计量来增强故障检测,其中使用了过滤后的SPE和SWE统计量。检测后,通过应用适当的故障隔离技术来识别过程故障。然而,研究文献中提出了各种各样的故障隔离方法。本研究的目的是提供一个简洁的研究,展示三种故障隔离方法的能力,如向后消除传感器识别,贡献图和故障重建方法,通过仿真实例给出正确的隔离结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensor fault detection and isolation techniques based on PCA
Due to its effectiveness and simplicity, principal components analysis (PCA) has been considered as a basic technique of multivariate statistical process control (MSPC) and it has been applied with a great success in the FDI domain. A set of independent latent variables named principal components (PCs) are created by a linear combination of the original system variables. In the field of sensor fault detection and diagnosis based on PCA, several types of monitoring statistics are well established for enhancing fault detection, where the filtered SPE and SWE statistics are used in this work. After detection, process malfunctions are identified by applying an adequate fault isolation technique. However, various approaches of fault isolation have been suggested in the research literature. The aim of this work is to provide a succinct study exhibiting the ability of three fault isolation methods such as backward elimination sensor identification, contributions charts and fault reconstruction approach to give the correct isolation results via a simulation example.
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