Fatigue condition diagnosis of rolling bearing based on normalized balanced multiscale sample entropy

[1]  Suchao Xie,et al.  Correlation feature distribution matching for fault diagnosis of machines , 2022, Reliab. Eng. Syst. Saf..

[2]  M. D. Nisar,et al.  Radio Frequency Fingerprint extraction based on Multiscale Approximate Entropy , 2022, Phys. Commun..

[3]  Suchao Xie,et al.  Locally generalized preserving projection and flexible grey wolf optimizer-based ELM for fault diagnosis of rolling bearing , 2022, Measurement.

[4]  Hao Wang,et al.  Power spectral density-guided variational mode decomposition for the compound fault diagnosis of rolling bearings , 2022, Measurement.

[5]  Lingjie Li,et al.  Modified Approximate Entropy Analysis for Data Processing of Electrochemical Noise with High Time Resolution toward Corrosion Monitoring , 2022, Corrosion Science.

[6]  Mehdi Saman Azari,et al.  Fault diagnosis in industrial rotating equipment based on permutation entropy, signal processing and multi-output neuro-fuzzy classifier , 2022, Expert Syst. Appl..

[7]  Yang Weng,et al.  A feature extraction and machine learning framework for bearing fault diagnosis , 2022, Renewable Energy.

[8]  Yan Peng,et al.  Rolling Mill Bearings Fault Diagnosis Based on Improved Multivariate Variational Mode Decomposition and Multivariate Composite Multiscale Weighted Permutation Entropy , 2022, Measurement.

[9]  Qianhua Kan,et al.  A novel deep learning approach of multiaxial fatigue life-prediction with a self-attention mechanism characterizing the effects of loading history and varying temperature , 2022, International Journal of Fatigue.

[10]  N. Zhang,et al.  Fault diagnosis for rolling bearing using a hybrid hierarchical method based on scale-variable dispersion entropy and parametric t-SNE algorithm , 2022, Measurement.

[11]  Huiming Jiang,et al.  High-fidelity noise-reconstructed empirical mode decomposition for mechanical multiple and weak fault extractions. , 2022, ISA transactions.

[12]  Suchao Xie,et al.  Bearing fault identification based on stacking modified composite multiscale dispersion entropy and optimised support vector machine , 2021, Measurement.

[13]  Jia Huang,et al.  Confidence level and reliability analysis of the fatigue life of CFRP laminates predicted based on fracture fatigue entropy , 2021, International Journal of Fatigue.

[14]  Jinde Zheng,et al.  Permutation entropy-based improved uniform phase empirical mode decomposition for mechanical fault diagnosis , 2021, Digit. Signal Process..

[15]  Anne Humeau-Heurtier,et al.  Multiscale Entropy Analysis of Short Signals: The Robustness of Fuzzy Entropy-Based Variants Compared to Full-Length Long Signals , 2021, Entropy.

[16]  Shun Jia,et al.  A sample entropy based prognostics method for lithium-ion batteries using relevance vector machine , 2021 .

[17]  Shubin Si,et al.  Hierarchical diversity entropy for the early fault diagnosis of rolling bearing , 2021, Nonlinear Dynamics.

[18]  Hao Wu,et al.  Estimation of remaining fatigue life under two-step loading based on kernel-extreme learning machine , 2021, International Journal of Fatigue.

[19]  L. Yao,et al.  An effective multi-channel fault diagnosis approach for rotating machinery based on multivariate generalized refined composite multi-scale sample entropy , 2021, Nonlinear Dynamics.

[20]  Yuan Wei,et al.  Parallel multi-scale entropy and it's application in rolling bearing fault diagnosis , 2021 .

[21]  Zhenya Wang,et al.  Modified multiscale weighted permutation entropy and optimized support vector machine method for rolling bearing fault diagnosis with complex signals. , 2021, ISA transactions.

[22]  Yifan Li,et al.  Application of the Variance Delay Fuzzy Approximate Entropy for Autonomic Nervous System Fluctuation Analysis in Obstructive Sleep Apnea Patients , 2020, Entropy.

[23]  Chaojie Wang,et al.  A sample entropy inspired affinity propagation method for bearing fault signal classification , 2020, Digit. Signal Process..

[24]  Cheng Yang,et al.  Health condition identification for rolling bearing based on hierarchical multiscale symbolic dynamic entropy and least squares support tensor machine–based binary tree , 2020, Structural Health Monitoring.

[25]  Anne Humeau-Heurtier,et al.  Multiscale Entropy Approaches and Their Applications , 2020, Entropy.

[26]  Wang Zhenya,et al.  Rolling bearing fault diagnosis using generalized refined composite multiscale sample entropy and optimized support vector machine , 2020 .

[27]  Niels A Kloosterman,et al.  Standard multiscale entropy reflects neural dynamics at mismatched temporal scales: What’s signal irregularity got to do with it? , 2020, PLoS Comput. Biol..

[28]  Virgínia Infante,et al.  Numerical and experimental study of aircraft structural health , 2020 .

[29]  Xin Sun,et al.  Improved multi-scale entropy and it's application in rolling bearing fault feature extraction , 2020 .

[30]  Jun Zhang,et al.  Composite multi-scale weighted permutation entropy and extreme learning machine based intelligent fault diagnosis for rolling bearing , 2019, Measurement.

[31]  Yibing Liu,et al.  Compound faults diagnosis and analysis for a wind turbine gearbox via a novel vibration model and empirical wavelet transform , 2019, Renewable Energy.

[32]  Hui Ma,et al.  Weighted multivariate composite multiscale sample entropy analysis for the complexity of nonlinear times series , 2018, Physica A: Statistical Mechanics and its Applications.

[33]  W. Y. Liu,et al.  A novel wind turbine fault diagnosis method based on intergral extension load mean decomposition multiscale entropy and least squares support vector machine , 2018 .

[34]  Maheshkumar H. Kolekar,et al.  Stator winding fault prediction of induction motors using multiscale entropy and grey fuzzy optimization methods , 2014, Comput. Electr. Eng..

[35]  Lin Liang,et al.  Quantitative diagnosis of a spall-like fault of a rolling element bearing by empirical mode decomposition and the approximate entropy method , 2013 .

[36]  Koichi Takahashi,et al.  Antipsychotics reverse abnormal EEG complexity in drug-naive schizophrenia: A multiscale entropy analysis , 2010, NeuroImage.

[37]  Weizhong Guo,et al.  A comparative study on ApEn, SampEn and their fuzzy counterparts in a multiscale framework for feature extraction , 2010 .

[38]  Mengyu Chai,et al.  Identification and prediction of fatigue crack growth under different stress ratios using acoustic emission data , 2022, International Journal of Fatigue.

[39]  M. Gabbouj,et al.  Enhanced hierarchical symbolic dynamic entropy and maximum mean and covariance discrepancy-based transfer joint matching with Welsh loss for intelligent cross-domain bearing health monitoring , 2022, Mechanical Systems and Signal Processing.

[40]  Hongqiu Zhu,et al.  Bearing remaining useful life prediction of fatigue degradation process based on dynamic feature construction , 2022, International Journal of Fatigue.

[41]  Amrinder Singh Minhas,et al.  A new bearing fault diagnosis approach combining sensitive statistical features with improved multiscale permutation entropy method , 2021, Knowl. Based Syst..

[42]  Geoffrey E. Hinton,et al.  Visualizing Data using t-SNE , 2008 .

[43]  Yongbo Li,et al.  Multiscale symbolic fuzzy entropy: An entropy denoising method for weak feature extraction of rotating machinery , 2022 .