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Data-driven fault detection methods for detecting small-magnitude faults in anaerobic digestion process

Pezhman Kazemi, Jaume Giralt, Christophe Bengoa, Jean‐Philippe Steyer

2020Water Science & Technology24 citationsDOI

Abstract

Early detection of small-magnitude faults in anaerobic digestion (AD) processes is a mandatory step for preventing serious consequence in the future. Since volatile fatty acids (VFA) accumulation is widely suggested as a process health indicator, a VFA soft-sensor was developed based on support vector machine (SVM) and used for generating the residuals by comparing real and predicted VFA. The estimated residual signal was applied to univariate statistical control charts such as cumulative sum (CUSUM) and square prediction error (SPE) to detect the faults. A principal component analysis (PCA) model was also developed for comparison with the aforementioned approach. The proposed framework showed excellent performance for detecting small-magnitude faults in the state parameters of AD processes.

Topics & Concepts

CUSUMResidualUnivariatePrincipal component analysisMagnitude (astronomy)Fault detection and isolationSupport vector machineComputer scienceProcess (computing)Anaerobic digestionStatisticsData miningPattern recognition (psychology)Biological systemMathematicsArtificial intelligenceMultivariate statisticsChemistryAlgorithmBiologyAstronomyMethaneOrganic chemistryOperating systemActuatorPhysicsFault Detection and Control SystemsMineral Processing and GrindingSpectroscopy and Chemometric Analyses
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