In the industrial panorama, many processes operate under time-varying conditions. Adapt¬ing high-performance diagnostic techniques under these relatively more complex situations is ur¬gently needed to mitigate the risk of false alarms. Attention is being paid to fault anticipation, requiring an in-depth study of prediction techniques. Predicting remaining life before the occurrence of faults allows for a comprehensive maintenance management protocol and facilitates the wear management of the machine, avoiding faults that could permanently compromise the integrity of such machinery. This study focuses on canonical variate analysis for fault detection in processes operating under time-varying conditions and on its contribution to the diagnostic and prognostic analysis, the latter of which was performed with machine learning techniques. The approach was validated on actual datasets from a granulator operating in the pharmaceutical sector.

Fault detection, diagnosis, and prognosis of a process operating under time-varying conditions / Quatrini, E.; Costantino, F.; Li, X.; Mba, D.. - In: APPLIED SCIENCES. - ISSN 2076-3417. - 12:9(2022). [10.3390/app12094737]

Fault detection, diagnosis, and prognosis of a process operating under time-varying conditions

Quatrini E.
;
Costantino F.
;
2022

Abstract

In the industrial panorama, many processes operate under time-varying conditions. Adapt¬ing high-performance diagnostic techniques under these relatively more complex situations is ur¬gently needed to mitigate the risk of false alarms. Attention is being paid to fault anticipation, requiring an in-depth study of prediction techniques. Predicting remaining life before the occurrence of faults allows for a comprehensive maintenance management protocol and facilitates the wear management of the machine, avoiding faults that could permanently compromise the integrity of such machinery. This study focuses on canonical variate analysis for fault detection in processes operating under time-varying conditions and on its contribution to the diagnostic and prognostic analysis, the latter of which was performed with machine learning techniques. The approach was validated on actual datasets from a granulator operating in the pharmaceutical sector.
2022
contribution plot; diagnosis; fault detection; performance estimation; prognosis; residual useful life prediction
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Fault detection, diagnosis, and prognosis of a process operating under time-varying conditions / Quatrini, E.; Costantino, F.; Li, X.; Mba, D.. - In: APPLIED SCIENCES. - ISSN 2076-3417. - 12:9(2022). [10.3390/app12094737]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1664459
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