Litcius/Paper detail

Predicting Bearings Degradation Stages for Predictive Maintenance in the Pharmaceutical Industry

Dovile Juodelyte, Veronika Cheplygina, Therese Graversen, Philippe Bonnet

2022Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining21 citationsDOI

Abstract

In the pharmaceutical industry, the maintenance of production machines must be audited by the regulator. In this context, the problem of predictive maintenance is not when to maintain a machine, but what parts to maintain at a given point in time. The focus shifts from the entire machine to its component parts and prediction becomes a classification problem. In this paper, we focus on rolling-elements bearings and we propose a framework for predicting their degradation stages automatically. Our main contribution is a k-means bearing lifetime segmentation method based on high-frequency bearing vibration signal embedded in a latent low-dimensional subspace using an AutoEncoder. Given high-frequency vibration data, our framework generates a labeled dataset that is used to train a supervised model for bearing degradation stage detection. Our experimental results, based on the publicly available FEMTO Bearing run-to-failure dataset, show that our framework is scalable and that it provides reliable and actionable predictions for a range of different bearings.

Topics & Concepts

Predictive maintenanceComputer scienceBearing (navigation)Context (archaeology)PrognosticsCondition monitoringSubspace topologyVibrationArtificial intelligenceDegradation (telecommunications)AutoencoderFocus (optics)Machine learningData miningReliability engineeringEngineeringArtificial neural networkPhysicsElectrical engineeringPaleontologyBiologyTelecommunicationsQuantum mechanicsOpticsMachine Fault Diagnosis TechniquesQuality and Safety in HealthcareMechanical Failure Analysis and Simulation
Predicting Bearings Degradation Stages for Predictive Maintenance in the Pharmaceutical Industry | Litcius