Publication | Closed Access
Detection and Classification of Multiple Power-Quality Disturbances With Wavelet Multiclass SVM
159
Citations
16
References
2008
Year
Fault DiagnosisEngineeringMachine LearningFault ForecastingLinear SvmCondition MonitoringSupport Vector MachineData SciencePattern RecognitionMulticlass SvmSystems EngineeringElectric Power QualityPower SystemsPower System AnalysisElectrical EngineeringPower-quality DisturbancesStructural Health MonitoringComputer EngineeringWavelet TheorySignal ProcessingSmart GridPower QualityWavelet Multiclass SvmDisturbance DetectionMultiple Power-quality Disturbances
This paper presents an integrated model for recognizing power-quality disturbances (PQD) using a novel wavelet multiclass support vector machine (WMSVM). The so-called support vector machine (SVM) is an effective classification tool. It is deemed to process binary classification problems. This paper combined linear SVM and the disturbances-versus-normal approach to form the multiclass SVM which is capable of processing multiple classification problems. Various disturbance events were tested for WMSVM and the wavelet-based multilayer-perceptron neural network was used for comparison. A simplified network architecture and shortened processing time can be seen for WMSVM.
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