Abstract
This paper presents a fault detection and diagnosis approach based on Mahalanobis distance (MD) for monitoring continuous processes. The Mahalanobis distance is first used to detect sensor faults, and its control limit is determined by the empirical method via specification a significance level. The main idea behind Mahalanobis distance is using the whole data information instead of dimensionality techniques such as partial least squares, canonical variate analysis, and principal component analysis. The data reflected by the detection index, MD, is analysed by a fault diagnosis method, i.e, contributions plots. An integrated approach for fault detection and diagnosis is presented and tested by two simulation studies, Monte Carlo simulation data and continuous stirred tank reactor chemical process(CSTR). The results illustrate the reliability of the proposed approach in detecting and diagnosing sensor faults.
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