Publication | Open Access
High-Voltage Circuit Breaker Fault Diagnosis Using a Hybrid Feature Transformation Approach Based on Random Forest and Stacked Autoencoder
140
Citations
34
References
2018
Year
Fault DiagnosisEngineeringMachine LearningDiagnosisFault ForecastingHybrid Feature TransformationNonlinear Feature MappingReliability EngineeringData SciencePattern RecognitionFault AnalysisElectrical EngineeringComputer EngineeringStructural Health MonitoringComputer ScienceVibration SignalStacked AutoencoderFeature ConstructionAutomatic Fault DetectionFault DetectionRandom Forest
In recent years, machine learning techniques have been applied to test the fault type in high-voltage circuit breakers (HVCBs). Most related research involves in improving the classification method for higher precision. Nevertheless, as an important part of the diagnosis, the feature information description of the vibration signal of an HVCB has been neglected; in particular, its diversity and significance are rarely considered in many real-world fault-diagnosis applications. Therefore, in this paper, a hybrid feature transformation is proposed to optimize the diagnosis performance for HVCB faults. First, we introduce a nonlinear feature mapping in the wavelet package time- frequency energy rate feature space based on random forest binary coding to extend the feature width. Then, a stacked autoencoder neural network is used for compressing the feature depth. Finally, five typical classifiers are applied in the hybrid feature space based on the experimental dataset. The superiority of the proposed feature optimal approach is verified by comparing the results in the three abovementioned feature spaces.
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