4.6 Article

An incipient fault diagnosis methodology using local Mahalanobis distance: Detection process based on empirical probability density estimation

Journal

SIGNAL PROCESSING
Volume 190, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.sigpro.2021.108308

Keywords

Incipient fault diagnosis; Fault detection; Time varying fault; Mahalanobis distance; Multivariate statistical process monitoring

Funding

  1. China Scholarship Council

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Incipient fault detection is a challenging and popular topic that focuses on detecting early subtle changes to prevent severe security issues. The proposed methodology combines a Local Mahalanobis Distance algorithm and an Empirical Probability Density estimation technique to improve detection sensitivity for non-Gaussian data conditions. Performance analysis using simulation data and a case study on the Continuous-flow Stirred Tank Reactor demonstrate the effectiveness and benefits of the proposed approach.
Incipient fault detection is growing as a challenging and hot topic in industrial and academic areas. It is essential to avoid slight unpermitted changes of a system state that can be aggravated and lead to severe security issues. The main challenge of this problem lies in the fact that tiny changes in the early stage can be blurred with noise and create confusion leading to poor detection performance of typical fault detection methods. To detect subtle deviations buried in noise and cope with the non-Gaussian distributed data condition while keeping with the time series information, a sensitive fault detection methodology combining a specifically tuned Local Mahalanobis Distance (LMD) algorithm and an Empirical Probability Density (EPD) estimation technique is proposed. More specifically, first, a healthy domain estimation is proposed to compute the local Mahalanobis distance with optimally tuned characteristics. To approximate a healthy domain, this work proposes a down-sampling algorithm for anchors generation and a parameter estimation method optimally tuned and based on Generalized Extreme Value distribution (GEV) for the domain margin selection. Subsequently, the EPD cumulative sum technique is applied to the LMD result for improving the detection sensitivity further. The performance analysis based on simulation data shows that our proposal is effective to non-Gaussian data and sensitive for incipient fault detection. A case study based on the Continuous-flow Stirred Tank Reactor (CSTR) further validates the effectiveness of our proposal and highlights its benefit by comparing it with state-of-the-art-based solutions in terms of detection delay, detection probability, false alarm probability, and area under the receiver operating characteristic curve (AUC). (c) 2021 Elsevier B.V. All rights reserved.

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