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Multiscale Monitoring Using Machine Learning Methods: New Methodology and an Industrial Application to a Photovoltaic System

Hanen Chaouch, Samia Charfeddine, Sondess Ben Aoun, Houssem Jerbi, Víctor Leiva

2022Mathematics20 citationsDOIOpen Access PDF

Abstract

In this study, a multiscale monitoring method for nonlinear processes was developed. We introduced a machine learning tool for fault detection and isolation based on the kernel principal component analysis (PCA) and discrete wavelet transform. The principle of our proposal involved decomposing multivariate data into wavelet coefficients by employing the discrete wavelet transform. Then, the kernel PCA was applied on every matrix of coefficients to detect defects. Only those scales that manifest overruns of the squared prediction errors in control limits were considered in the data reconstruction phase. Thus, the kernel PCA was approached on the reconstructed matrix for detecting defects and isolation. This approach exploits the kernel PCA performance for nonlinear process monitoring in combination with multiscale analysis when processing time-frequency scales. The proposed method was validated on a photovoltaic system related to a complex industrial process. A data matrix was determined from the variables that characterize this process corresponding to motor current, angular speed, convertor output voltage, and power voltage system output. We tested the developed methodology on 1000 observations of photovoltaic variables. A comparison with monitoring methods based on neural PCA was established, proving the efficiency of the developed methodology.

Topics & Concepts

Fault detection and isolationPrincipal component analysisKernel principal component analysisKernel (algebra)WaveletDiscrete wavelet transformWavelet transformArtificial intelligencePhotovoltaic systemComputer sciencePattern recognition (psychology)Matrix (chemical analysis)Nonlinear systemKernel methodEngineeringSupport vector machineMathematicsComposite materialMaterials scienceElectrical engineeringPhysicsCombinatoricsActuatorQuantum mechanicsFault Detection and Control SystemsMineral Processing and GrindingSpectroscopy and Chemometric Analyses
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