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Predictive Maintenance using Machine Learning: A Case Study in Manufacturing Management

Deepanshu Singh Satwaliya, H. Pal Thethi, Anubhuti Dhyani, G. Ravi Kiran, Mustafa Al-Taee, Malik Bader Alazzam

202320 citationsDOI

Abstract

Predictive maintenance has become an important area of focus for many manufacturers in recent years, as it allows for the proactive identification of equipment issues before they become critical. In this paper, we present a case study in the application of machine learning for predictive maintenance in a manufacturing management setting. Through the implementation of various algorithms such as random forests, gradient boosting, and deep learning, we show that machine learning can provide significant improvements in the accuracy of predicting equipment failures. The results of our study demonstrate that predictive maintenance using machine learning can reduce downtime and maintenance costs, while improving the overall efficiency of manufacturing operations. The findings of this case study can provide valuable insights for manufacturers looking to adopt predictive maintenance strategies and incorporate machine learning into their maintenance management processes.

Topics & Concepts

Predictive maintenanceDowntimeComputer scienceMachine learningRandom forestOverall equipment effectivenessArtificial intelligenceGradient boostingIdentification (biology)Proactive maintenanceMaintenance engineeringBoosting (machine learning)Reliability engineeringEngineeringProduction (economics)MacroeconomicsBotanyOperating systemBiologyEconomicsMachine Fault Diagnosis TechniquesFault Detection and Control SystemsIndustrial Vision Systems and Defect Detection