WANG Ying, SONG YuBo, ZHU DaPeng. ROLLING BEARING WEAK FAULT FEATURE EXTRACTION METHOD WITH ALIF⁃NLM[J]. Journal of mechanical strength , 2024, 46(5): 1026-1035.
DOI:
WANG Ying, SONG YuBo, ZHU DaPeng. ROLLING BEARING WEAK FAULT FEATURE EXTRACTION METHOD WITH ALIF⁃NLM[J]. Journal of mechanical strength , 2024, 46(5): 1026-1035. DOI: 10.16579/j.issn.1001.9669.2024.05.002.
ROLLING BEARING WEAK FAULT FEATURE EXTRACTION METHOD WITH ALIF⁃NLM
Aiming at the problem that the early weak fault feature was difficult to extract of rolling bearing under the strong noise background
combined with the advantages of adaptive local iterative filter(ALIF)and non⁃local means(NLM)method
an ALIF⁃NLM bearing weak fault feature extraction method was proposed.Firstly
a weighted kurtosis⁃energy ratio criterion was constructed to filter the intrinsic mode function(IMF)components of the ALIF decomposition and reconstruct the signal.Secondly
the minimum energy entropy⁃kurtosis ratio index was constructed by combining the sensitivity of kurtosis to the impact signal with the evaluation performance of energy entropy to the uniformity and complexity of signal energy distribution
and using this index as the fitness function
the adaptive selection of parameter combinations in NLM method was realized by particle swarm optimization(PSO)algorithm.Finally
the fault feature of the reconstructed signal was extracted with the adaptive NLM.The simulation and experimental results show that this method can effectively extract the weak fault feature information of rolling bearing under the strong noise background.