Alexandria Engineering Journal (Feb 2024)

Machine learning and IoT – Based predictive maintenance approach for industrial applications

  • Sherien Elkateb,
  • Ahmed Métwalli,
  • Abdelrahman Shendy,
  • Ahmed E.B. Abu-Elanien

Journal volume & issue
Vol. 88
pp. 298 – 309

Abstract

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Unplanned outage in industry due to machine failures can lead to significant production losses and increased maintenance costs. Predictive maintenance methods use the data collected from IoT-enabled devices installed in working machines to detect incipient faults and prevent major failures. In this study, a predictive maintenance system based on machine learning algorithms, specifically AdaBoost, is presented to classify different types of machines stops in real-time with application in knitting machines. The data collected from the machines include machine speeds and steps, which were pre-processed and fed into the machine learning model to classify six types of machines stops: gate stop, feeder stop, needle stop, completed roll stop, idle stop, and lycra stop. The model is trained and optimized using a combination of hyperparameter tuning and cross-validation techniques to achieve an accuracy of 92% on the test set. The results demonstrate the potential of the proposed system to accurately classify machine stops and enable timely maintenance actions; thereby, improving the overall efficiency and productivity of the textile industry.

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