多传感器故障检测与隔离的分层新方法。应用于空气质量监测网络

Y. Tharrault, M. Harkat, G. Mourot, J. Ragot
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引用次数: 2

摘要

本文主要研究了基于主成分分析的多传感器故障检测与隔离问题。结构化残差用于多故障隔离。这些结构化残差是基于变量重构的原理。然而,基于重构方法的多重故障隔离导致重构组合的爆炸式增长。因此,我们不考虑故障变量的所有子集,而是通过去除具有过高的最小故障幅度的变量子集来确定可隔离的多个故障。不幸的是,在大量变量的情况下,这种方案仍然会导致需要考虑的错误场景的爆炸。一种有效的方法是采用多块重构方法,将过程变量划分为多个块。在这种分层方法的第一步,目标是隔离有缺陷的块,然后在第二步,从有缺陷的块中,必须隔离有缺陷的变量。该方法已成功应用于空气质量监测网络的多传感器故障检测与隔离。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New hierarchical approach for multiple sensor fault detection and isolation. Application to an air quality monitoring network
Our work is devoted to the problem of multiple sensor fault detection and isolation using principal component analysis. Structured residuals are used for multiple fault isolation. These structured residuals are based on the principle of variable reconstruction. However, multiple fault isolation based on reconstruction approach leads to an explosion of the reconstruction combinations. Therefore instead of considering all the subsets of faulty variables, we determine the isolable multiple faults by removing the subsets of variables that have too high minimum fault amplitudes to ensure fault isolation. Unfortunately, in the case of a large number of variables, this scheme yet leads to an explosion of faulty scenarios to consider. An effective approach is to use multi-block reconstruction approach where the process variables are partitioned into several blocks. In the first step of this hierarchical approach, the goal is to isolate faulty blocks and then in the second step, from the faulty blocks, faulty variables have to be isolated. The proposed approach is successfully applied to multiple sensor fault detection and isolation of an air quality monitoring network.
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