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ceemdan

于 2021-03-20 发布
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下载积分: 1 下载次数: 9

代码说明:

说明:  该算法适用于各种非线性,非平稳的信号,对于数据的分析较透彻。(The algorithm is suitable for various non-linear and non-stationary signals, and the data analysis is more thorough.)

文件列表:

CEEMDAN\AAPE.m, 3412 , 2020-11-08
CEEMDAN\DiffSymEn.m, 1132 , 2020-05-18
CEEMDAN\DispEn.m, 3076 , 2020-05-18
CEEMDAN\imf.mat, 83302 , 2020-11-10
CEEMDAN\main.m, 989 , 2020-11-11
ceemdan\SAM_CEEMDAN.m, 1263 , 2020-11-15
ceemdan\SAM_EMD.m, 9090 , 2020-11-15
ceemdan\SPT_ST.m, 227 , 2020-11-15
ceemdan\test.m, 195 , 2020-11-15
ceemdan\湖北碳价格.xlsx, 22357 , 2020-11-08
ceemdan, 0 , 2020-11-15

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