Novel Method Based on Variational Mode Decomposition and a Random Discriminative Projection Extreme Learning Machine for Multiple Power Quality Disturbance Recognition
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Xuebin Xu | Chen Zhao | Lingyun Wang | Kaicheng Li | Yuanzheng Li | Xiaojun Ding | Yi Luo | Qingxu Meng | Chen Zhao | Yuanzheng Li | Xuebin Xu | Kaicheng Li | Lingyun Wang | Yi Luo | Xiaojun Ding | Qingxu Meng
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