Publication | Open Access
Power Quality Event Detection Using a Fast Extreme Learning Machine
60
Citations
36
References
2018
Year
Electrical EngineeringEngineeringMachine LearningSmart GridData MiningPattern RecognitionData ScienceEnergy ManagementPower Quality EventsExtreme Learning MachineComputer EngineeringFeature ExtractionSystems EngineeringSmart EnergyEnergy MonitoringElectric Power QualityPower System Analysis
Monitoring Power Quality Events (PQE) is a crucial task for sustainable and resilient smart grid. This paper proposes a fast and accurate algorithm for monitoring PQEs from a pattern recognition perspective. The proposed method consists of two stages: feature extraction (FE) and decision-making. In the first phase, this paper focuses on utilizing a histogram based method that can detect the majority of PQE classes while combining it with a Discrete Wavelet Transform (DWT) based technique that uses a multi-resolution analysis to boost its performance. In the decision stage, Extreme Learning Machine (ELM) classifies the PQE dataset, resulting in high detection performance. A real-world like PQE database is used for a thorough test performance analysis. Results of the study show that the proposed intelligent pattern recognition system makes the classification task accurately. For validation and comparison purposes, a classic neural network based classifier is applied.
| Year | Citations | |
|---|---|---|
Page 1
Page 1