EEMD集合经验模态分解matlab程序代码

上传者: 42956898 | 上传时间: 2019-12-21 18:57:03 | 文件大小: 189KB | 文件类型: rar
EEMD是Ensemble Empirical Mode Decomposition的缩写,中文是集合经验模态分解,是针对EMD方法的不足,提出了一种噪声辅助数据分析方法。EEMD分解原理是当附加的白噪声均匀分布在整个时频空间时,该时频空间就由滤波器组分割成的不同尺度成分组成。MATLAB版本

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  • lin_02 :
    一般啊啊啊啊啊
    2020-05-23

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