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FDM

于 2021-02-23 发布 文件大小:10425KB
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下载积分: 1 下载次数: 17

代码说明:

  一种新的自适应信号分解算法,能有效地分解出多分量信号(A new adaptive signal decomposition algorithm can effectively decompose multi-component signals.)

文件列表:

FDM, 0 , 2016-10-07
FDM\1.5维谱, 0 , 2016-08-22
FDM\1.5维谱\1.fig, 10978 , 2016-08-22
FDM\1.5维谱\a.fig, 6852 , 2016-08-22
FDM\1.5维谱\a1.fig, 11599 , 2016-08-22
FDM\1.5维谱\a2.fig, 55649 , 2016-08-22
FDM\1.5维谱\a3.fig, 55741 , 2016-08-22
FDM\1.5维谱\a4.fig, 55723 , 2016-08-22
FDM\1.5维谱\a5.fig, 11203 , 2016-08-22
FDM\1.5维谱\a6.fig, 7094 , 2016-08-22
FDM\1.5维谱\a7.fig, 11645 , 2016-08-22
FDM\1.5维谱\b1.fig, 19764 , 2016-08-22
FDM\1.5维谱\b2.fig, 103008 , 2016-08-22
FDM\1.5维谱\b3.fig, 102971 , 2016-08-22
FDM\1.5维谱\b4.fig, 46078 , 2016-08-22
FDM\1.5维谱\b5.fig, 21066 , 2016-08-22
FDM\1.5维谱\b6.fig, 21237 , 2016-08-22
FDM\1.5维谱\b7.fig, 12386 , 2016-08-22
FDM\1.5维谱\Bearing_FDM_Teager.asv, 2854 , 2016-08-22
FDM\1.5维谱\Bearing_FDM_Teager.m, 3244 , 2016-08-22
FDM\1.5维谱\fangzhenshuju.mat, 7936 , 2016-08-22
FDM\1.5维谱\fazhen.mat, 8132 , 2016-08-22
FDM\1.5维谱\FDM_HTL.m, 5324 , 2016-07-25
FDM\1.5维谱\FDM_LTH.m, 6244 , 2016-07-25
FDM\1.5维谱\nspplote.m, 7537 , 2015-10-29
FDM\1.5维谱\Simulation_Bearing_Default.m, 1587 , 2016-07-25
FDM\1.5维谱\Simulation_FDM_Teager.asv, 4316 , 2016-08-22
FDM\1.5维谱\Simulation_FDM_Teager.m, 4316 , 2016-08-22
FDM\1.5维谱\Simulation_One.m, 1366 , 2016-07-25
FDM\1.5维谱\Simulation_sucess_default.m, 740 , 2016-08-16
FDM\1.5维谱\sp_PlotTF.m, 1381 , 2016-07-20
FDM\1.5维谱\Teager.m, 148 , 2016-08-16
FDM\1.5维谱\Teager_Bearing_in_default.m, 2970 , 2016-08-16
FDM\1.5维谱\third_slice_cumulant.m, 227 , 2016-08-16
FDM\baoluopu.m, 127 , 2016-07-22
FDM\bearing.fig, 102942 , 2016-07-22
FDM\bearing2_1.fig, 102975 , 2016-07-23
FDM\bearing2_2.fig, 61992 , 2016-07-23
FDM\bearing2_3.fig, 106689 , 2016-07-23
FDM\bearing_1.fig, 102985 , 2016-07-22
FDM\bearing_2.fig, 103024 , 2016-07-23
FDM\bearing_3.fig, 20737 , 2016-07-22
FDM\bearing_4.fig, 106361 , 2016-07-23
FDM\Bearing_Default.asv, 1449 , 2016-07-22
FDM\Bearing_Default.m, 1633 , 2016-07-25
FDM\Bearing_two.asv, 1344 , 2016-07-23
FDM\Bearing_two.m, 1372 , 2016-07-23
FDM\emd1.m, 3641 , 2016-07-17
FDM\FDM.asv, 1443 , 2016-07-10
FDM\FDM.m, 1432 , 2016-07-10
FDM\FDM_HTL.asv, 11831 , 2016-07-17
FDM\FDM_HTL.m, 5308 , 2016-07-17
FDM\FDM_LTH.asv, 9237 , 2016-07-17
FDM\FDM_LTH.m, 6282 , 2016-10-02
FDM\FMD_examples.m, 6776 , 2016-05-15
FDM\FMD_Low2High_High2LowSacnning.asv, 15399 , 2016-07-17
FDM\FMD_Low2High_High2LowSacnning.m, 15407 , 2016-07-17
FDM\nspplote.m, 7537 , 2015-10-29
FDM\PlotTF_FFT.asv, 2340 , 2016-07-17
FDM\PlotTF_FFT.m, 2341 , 2016-07-17
FDM\Simulation_FDM.m, 581 , 2016-08-16
FDM\Simulation_one.asv, 766 , 2016-07-17
FDM\Simulation_one.m, 1523 , 2016-07-17
FDM\Simulation_Three.asv, 1414 , 2016-07-17
FDM\Simulation_Three.m, 2144 , 2016-07-20
FDM\Simulation_Two.asv, 843 , 2016-07-17
FDM\Simulation_Two.m, 1046 , 2016-07-17
FDM\sp_PlotTF.asv, 1234 , 2016-07-17
FDM\sp_PlotTF.m, 1389 , 2016-07-25
FDM\three4.fig, 869128 , 2016-07-20
FDM\three_1.fig, 12614 , 2016-07-17
FDM\three_2.fig, 25124 , 2016-07-17
FDM\three_3.fig, 981714 , 2016-07-20
FDM\three_5.fig, 981653 , 2016-07-20
FDM\three_6.fig, 2626342 , 2016-07-20
FDM\two_1.fig, 36705 , 2016-07-17
FDM\two_2.fig, 48892 , 2016-07-17
FDM\奇异值差分谱, 0 , 2016-10-07
FDM\奇异值差分谱\FDM_HTL.m, 5324 , 2016-07-25
FDM\奇异值差分谱\FDM_LTH.m, 6244 , 2016-07-25
FDM\奇异值差分谱\Simulation.asv, 1347 , 2016-10-07
FDM\奇异值差分谱\Simulation.m, 1390 , 2016-10-08
FDM\转子碰摩, 0 , 2016-09-22
FDM\转子碰摩\a.fig, 8969 , 2016-09-08
FDM\转子碰摩\b.fig, 22492 , 2016-09-08
FDM\转子碰摩\b1.fig, 22460 , 2016-09-08
FDM\转子碰摩\bear1.fig, 975501 , 2016-09-22
FDM\转子碰摩\bear1.jpg, 8295 , 2016-09-22
FDM\转子碰摩\bear2.fig, 859554 , 2016-09-22
FDM\转子碰摩\bear2.jpg, 9730 , 2016-09-22
FDM\转子碰摩\bear3.fig, 894835 , 2016-09-22
FDM\转子碰摩\bear3.jpg, 10704 , 2016-09-22
FDM\转子碰摩\bear4.fig, 763226 , 2016-09-22
FDM\转子碰摩\bear4.jpg, 10373 , 2016-09-22
FDM\转子碰摩\c.fig, 3037 , 2016-09-08
FDM\转子碰摩\c1.fig, 3038 , 2016-09-08
FDM\转子碰摩\Default.asv, 5013 , 2016-09-20
FDM\转子碰摩\Default.m, 5013 , 2016-09-25
FDM\转子碰摩\e.fig, 30544 , 2016-09-18
FDM\转子碰摩\FDM_HTL.m, 5324 , 2016-07-25

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