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Data-based ensemble approach for semi-supervised anomaly detection in machine tool condition monitoring

Berend Denkena, Marc-André Dittrich, H. D. Nöske, Dennis Stoppel, D.H. Lange

2021CIRP journal of manufacturing science and technology23 citationsDOIOpen Access PDF

Abstract

Data-based methods are capable to monitor machine components. Approaches for semi-supervised anomaly detection are trained using sensor data that describe the normal state of machine components. Thus, such approaches are interesting for industrial practice, since sensor data do not have to be labeled in a time-consuming and costly way. In this work, an ensemble approach for semi-supervised anomaly detection is used to detect anomalies. It is shown that the ensemble approach is suitable for condition monitoring of ball screws. For the evaluation of the approach, a data set of a regular test cycle of a ball screw from automotive industry is used.

Topics & Concepts

Anomaly detectionAutomotive industryComputer scienceData miningArtificial intelligenceAnomaly (physics)Data setMachine learningPattern recognition (psychology)EngineeringAerospace engineeringCondensed matter physicsPhysicsAnomaly Detection Techniques and ApplicationsFault Detection and Control SystemsMachine Fault Diagnosis Techniques
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