Predictive Maintenance and Fault Monitoring Enabled by Machine Learning: Experimental Analysis of a TA-48 Multistage Centrifugal Plant Compressor

Author:

Achouch Mounia123ORCID,Dimitrova Mariya1,Dhouib Rizck1ORCID,Ibrahim Hussein13,Adda Mehdi2ORCID,Sattarpanah Karganroudi Sasan14ORCID,Ziane Khaled3ORCID,Aminzadeh Ahmad1ORCID

Affiliation:

1. Technological Institute of Industrial Maintenance ITMI, 175 Rue de la Vérendrye, Sept-Îles, QC G4R 5B7, Canada

2. Department of Mathematics, Computer Science and Engineering, University of Quebec at Rimouski, Rimouski, QC G56 3A1, Canada

3. Centre for Research and Innovation in Energy Intelligence CR2Ie, 175 Rue de la Vérendrye, Sept-Îles, QC G4R 5B7, Canada

4. Department of Mechanical Engineering, University of Quebec at Trois-Rivières, Trois-Rivières, QC G8Z 4M3, Canada

Abstract

In an increasingly competitive industrial world, the need to adapt to any change at any time has become a major necessity for every industry to remain competitive and survive in their environments. Industries are undergoing rapid and perpetual changes on several levels. Indeed, the latter requires companies to be more reactive and involved in their policies of continuous improvement in order to satisfy their customers and maximize the quantity and quality of production, while keeping the cost of production as low as possible. Reducing downtime is one of the major objectives of these industries of the future. This paper aimed to apply machine learning algorithms on a TA-48 multistage centrifugal compressor for failure prediction and remaining useful life (RUL), i.e., to reduce system downtime using a predictive maintenance (PdM) approach through the adoption of Industry 4.0 approaches. To achieve our goal, we followed the methodology of the predictive maintenance workflow that allows us to explore and process the data for the model training. Thus, a comparative study of different prediction algorithms was carried out to arrive at the final choice, which is based on the implementation of LSTM neural networks. In addition, its performance was improved as the data sets were fed and incremented. Finally, the model was deployed to allow operators to know the failure times of compressors and subsequently ensure minimum downtime rates by making decisions before failures occur.

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

Reference30 articles.

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