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Review—Deep Learning Methods for Sensor Based Predictive Maintenance and Future Perspectives for Electrochemical Sensors

Srikanth Namuduri, Barath Narayanan Narayanan, Venkata Salini Priyamvada Davuluru, L. K. BURTON, Shekhar Bhansali

2020Journal of The Electrochemical Society186 citationsDOIOpen Access PDF

Abstract

The downtime of industrial machines, engines, or heavy equipment can lead to a direct loss of revenue. Accurate prediction of such failures using sensor data can prevent or reduce the downtime. With the availability of Internet of Things (IoT) technologies, it is possible to acquire the sensor data in real-time. Machine Learning and Deep Learning (DL) algorithms can then be used to predict the part and equipment failures, given enough historical data. DL algorithms have shown significant advances in problems where progress has eluded the practitioners and researchers for several decades. This paper reviews the DL algorithms used for predictive maintenance and presents a case study of engine failure prediction. We also discuss the current use of sensors in the industry and future opportunities for electrochemical sensors in predictive maintenance.

Topics & Concepts

DowntimePredictive maintenanceComputer scienceInternet of ThingsReliability engineeringRevenueMachine learningRisk analysis (engineering)Artificial intelligenceEngineeringEmbedded systemAccountingBusinessMedicineFault Detection and Control SystemsMachine Fault Diagnosis TechniquesNon-Destructive Testing Techniques
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