Publication | Open Access
Evaluation of Anomaly Detection of an Autoencoder Based on Maintenace Information and Scada-Data
21
Citations
12
References
2020
Year
Fault DiagnosisAnomaly DetectionMachine LearningEngineeringIntelligent DiagnosticsDiagnosisWind Turbine SubsystemsFault ForecastingIntelligent SystemsCondition MonitoringData SciencePattern RecognitionManagementSystems EngineeringMaintenace InformationUndercomplete AutoencoderWind TurbinePredictive AnalyticsOutlier DetectionComputer ScienceSignal ProcessingAutomatic Fault DetectionNovelty DetectionIndustrial InformaticsFault Detection
The usage of machine learning techniques is widely spread and has also been implemented in the wind industry in the last years. Many of these techniques have shown great success but need to constantly prove the expectation of functionality. This paper describes a new method to monitor the health of a wind turbine using an undercomplete autoencoder. To evaluate the health monitoring quality of the autoencoder, the number of anomalies before an event has happened are to be considered. The results show that around 35% of all historical events that have resulted into a failure show many anomalies. Furthermore, the wind turbine subsystems which are subject to good detectability are the rotor system and the control system. If only one third of the service duties can be planned in advance, and thereby the scheduling time can be reduced, huge cost saving potentials can be seen.
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