Publication | Open Access
Recurrent Neural Network for Partial Discharge Diagnosis in Gas-Insulated Switchgear
100
Citations
38
References
2018
Year
Fault DiagnosisElectrical EngineeringCondition MonitoringPartial DischargeMachine LearningPd PatternsEngineeringPattern RecognitionRecurrent Neural NetworkFault ForecastingComputer EngineeringSystems EngineeringAutomatic Fault DetectionPartial Discharge DiagnosisDeep LearningSignal Processing
The analysis of partial discharge (PD) signals has been identified as a standard diagnostic tool for monitoring the condition of different electrical apparatuses. This study proposes an approach to detecting PD patterns in gas-insulated switchgear (GIS) using a long short-term memory (LSTM) recurrent neural network (RNN). The proposed method uses phase-resolved PD (PRPD) signals as input, extracts low-level features, and finally, classifies faults in GIS. In the proposed method, LSTM networks can learn temporal dependencies directly from PRPD signals. Most existing models use support vector machines (SVMs) and mainly focus on improving feature representation and extraction manually to analyze PRPD signals. However, the proposed model captures important temporal features with the help of its low-level feature extraction capability from raw inputs. It outperforms conventional SVMs and achieves 96.74% classification accuracy for PRPDs in GIS.
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