An Extrema Extension Method Based on Support Vector Regression for Restraining the End Effects in Empirical Mode Decomposition
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Jianzhong Zhou | Jian-zhong Zhou | Xue Wang | Y. Zhang | Yong Chuan Zhang | Xiao Ming Xue | Xiao Jian | Xue Min Wang | Xiaoming Xue | Xiao Jian
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