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A Predictive Maintenance Application for A Robot Cell using LSTM Model

Doyel Joseph, Tilani Gallege, Ebru Turanoğlu Bekar, Catarina Dudas, Anders Skoogh

2022IFAC-PapersOnLine11 citationsDOIOpen Access PDF

Abstract

Maintaining equipment is critical for increasing production capacity and decreasing production time. With the advent of digitalization, industries are able to access massive amounts of data that can be used to ensure their long-term viability and competitive advantage by implementing predictive maintenance. Therefore, this study aims to demonstrate a predictive maintenance application for a robot cell using real-world manufacturing big data coming from a company in the automotive industry. A hyperparameter tuned Long Short-Term Memory (LSTM) model is developed, and the results show that this model is capable of predicting the day of failure with good accuracy. The difficulties inherent in conducting real-world industrial initiatives are analyzed, and recommendations for improvement are presented.

Topics & Concepts

HyperparameterAutomotive industryPredictive maintenanceComputer scienceProduction (economics)Overall equipment effectivenessRobotModel predictive controlManufacturingMachine learningArtificial intelligenceReliability engineeringManufacturing engineeringEngineeringBusinessMarketingMacroeconomicsEconomicsAerospace engineeringControl (management)Digital Transformation in IndustryIndustrial Vision Systems and Defect DetectionFault Detection and Control Systems
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