PoS - Proceedings of Science
Volume 300 - Information Science and Cloud Computing (ISCC 2017) - Sesssion III: System detection
Fault Diagnosis of Power Quality and Disturbance Classification Based on KPCA - FDA Method
L. Xie* and J. Wei
Full text: pdf
Pre-published on: February 26, 2018
Published on: March 08, 2018
Abstract
Aiming at the problem of power quality detection and classification, a method for classifying and identifying the faults of power quality based on KPCA (Kernel principal component analysis) and FDA (Fisher Discriminant Analysis) is proposed. Using KPCA to extract the characteristics of the energy index, and the high-dimensional information of the index is deeply excavated. According to FDA, the extracted principal components are classified with high precision, and the training results are adjusted by the training array and the test array. Finally, the central eigenvector of the six types of power quality disturbance is determined, and the detected power quality data are classified. In accordance with the experimental results, the KPCA-FDA is used to classify the six types of power quality, which are more precise than PCA and KPCA in the correctness of various power quality fault classification.
DOI: https://doi.org/10.22323/1.300.0038
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