"Research on the Power System Fault Classification Based on HHT and SVM Using Wide-area Information"
written by Yiran Guo, Changqing Li, Yali Li, Shibin Gao,
published by Energy and Power Engineering, Vol.5 No.4B, 2013
has been cited by the following article(s):
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[11] A Nonlinear and Non-Stationary Signal Analysis for Accurate Power Quality Monitoring in Smart Grids
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[12] Combined Morphology and SVM-based Fault Feature Extraction Technique for