2013
DOI: 10.1021/ie4016655
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Nonlinear Detection and Isolation of Multiple Faults Using Residuals Modeling

Abstract: This paper proposes a model-based detection and isolation (FDI) system based on nonlinear state estimation that can be applied to nonlinear systems. The proposed FDI system uses an extended Kalman filter (EKF), in which conditions based on high filtering are defined to best serve the FDI objectives. A better understanding of the residual trends, calculated from the difference between measurements and the EKF estimates, can be obtained when a fault occurs by developing a model that is able to predict the behavi… Show more

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Cited by 4 publications
(2 citation statements)
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“…This is because both approaches entail differentiating the statistical index, which is difficult if the chain involves a kernel function [86]. Nevertheless, many researchers have derived analytical expressions for either kernel contributions-based diagnosis [66,79,81,83,87,94,119,127,133,136,146,150,156,157,162,164,194,213,241,268,275,276,278,279,288,289,293] or kernel reconstructions-based diagnosis [86,117,140,155,161,163,176,217,236,254,265,285]. However, most derivations are applicable only when the kernel function is the RBF, Equation (5).…”
Section: Diagnosis By Fault Identificationmentioning
confidence: 99%
“…This is because both approaches entail differentiating the statistical index, which is difficult if the chain involves a kernel function [86]. Nevertheless, many researchers have derived analytical expressions for either kernel contributions-based diagnosis [66,79,81,83,87,94,119,127,133,136,146,150,156,157,162,164,194,213,241,268,275,276,278,279,288,289,293] or kernel reconstructions-based diagnosis [86,117,140,155,161,163,176,217,236,254,265,285]. However, most derivations are applicable only when the kernel function is the RBF, Equation (5).…”
Section: Diagnosis By Fault Identificationmentioning
confidence: 99%
“…The methods of process monitoring and fault detection are divided into 3 categories: model‐based methods, knowledge‐based methods, and data‐based methods. Compared with the first 2 methods, the data‐based methods have no requirement of a priori process model and associated expert knowledge, which has made them attract more popular attention in recent years …”
Section: Introductionmentioning
confidence: 99%