HOS network-based classification of power quality events via regression algorithms

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作者
José Carlos Palomares Salas
Juan José González de la Rosa
José María Sierra Fernández
Agustín Agüera Pérez
机构
[1] Research Group PAIDI-TIC-168: Computational Instrumentation and Industrial Electronics (ICEI),Area of Electronics, Polytechnic School of Engineering
[2] University of Cádiz,undefined
[3] Av. Ramón Puyol S/N.,undefined
关键词
Artificial neural networks (ANN); Power quality (PQ); Cumulants; Higher-order statistics (HOS); Regression algorithms; Smart grid (SG); Spectral kurtosis (SK);
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摘要
This work compares seven regression algorithms implemented in artificial neural networks (ANNs) supported by 14 power-quality features, which are based in higher-order statistics. Combining time and frequency domain estimators to deal with non-stationary measurement sequences, the final goal of the system is the implementation in the future smart grid to guarantee compatibility between all equipment connected. The principal results are based in spectral kurtosis measurements, which easily adapt to the impulsive nature of the power quality events. These results verify that the proposed technique is capable of offering interesting results for power quality (PQ) disturbance classification. The best results are obtained using radial basis networks, generalized regression, and multilayer perceptron, mainly due to the non-linear nature of data.
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