A platform for research: civil engineering, architecture and urbanism
METHOD OF FAULT FEATURE EXTRATION BASED ON CEEMD AND FASTICA
In order to solve the problem that the fault feature information of rolling bearing is difficult to be separated,a new method of fault feature extraction is presented,which is based on the complementary ensemble empirical mode decomposition( CEEMD) and fast independent component analysis( Fast ICA). First,analyze the CEEMD vibration signals,decompose them into intrinsic mode function( IMF) components signal of different scales; then through the sensitivity evaluation algorithm,decompose and recombine the signals,and use Fast ICA to reduce their noise; in the end,conduct Hilbert envelope spectrum analysis to the signals separated by the Fast ICA,to obtain the fault feature information. This method is applied to the fault analysis of rolling bearing vibration signal,and was proved to be valid.
METHOD OF FAULT FEATURE EXTRATION BASED ON CEEMD AND FASTICA
In order to solve the problem that the fault feature information of rolling bearing is difficult to be separated,a new method of fault feature extraction is presented,which is based on the complementary ensemble empirical mode decomposition( CEEMD) and fast independent component analysis( Fast ICA). First,analyze the CEEMD vibration signals,decompose them into intrinsic mode function( IMF) components signal of different scales; then through the sensitivity evaluation algorithm,decompose and recombine the signals,and use Fast ICA to reduce their noise; in the end,conduct Hilbert envelope spectrum analysis to the signals separated by the Fast ICA,to obtain the fault feature information. This method is applied to the fault analysis of rolling bearing vibration signal,and was proved to be valid.
METHOD OF FAULT FEATURE EXTRATION BASED ON CEEMD AND FASTICA
HUANG GangJing (author) / FAN YuGang (author) / HUANG GuoYong (author)
2018
Article (Journal)
Electronic Resource
Unknown
Metadata by DOAJ is licensed under CC BY-SA 1.0
FAULT FEATURE EXTRATION METHOD BASED ON LCD FUZZY ENTROPY AND MANIFOLD LEARNING
DOAJ | 2016
|FAULT DIAGNOSIS METHOD OF AIRBORNE FUEL PUMP BASED ON CEEMD SHANNON ENTROPY AND GAPSO-SVM
DOAJ | 2022
|