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MHTFPE2D: two-dimensional multi-scale hierarchical time–frequency permutation entropy for complexity measurement
by
Bao, Jinlong
, Pan, Haiyang
, Zheng, Jinde
, Cheng, Jian
, Tong, Jinyu
in
Automotive Engineering
/ Classical Mechanics
/ Complexity
/ Control
/ Datasets
/ Dynamical Systems
/ Engineering
/ Entropy
/ Fault diagnosis
/ Frequency domain analysis
/ Mechanical Engineering
/ Nonlinear dynamics
/ Permutations
/ Roller bearings
/ Sequences
/ Stability
/ Time domain analysis
/ Time measurement
/ Time series
/ Time-frequency analysis
/ Vibration
2024
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MHTFPE2D: two-dimensional multi-scale hierarchical time–frequency permutation entropy for complexity measurement
by
Bao, Jinlong
, Pan, Haiyang
, Zheng, Jinde
, Cheng, Jian
, Tong, Jinyu
in
Automotive Engineering
/ Classical Mechanics
/ Complexity
/ Control
/ Datasets
/ Dynamical Systems
/ Engineering
/ Entropy
/ Fault diagnosis
/ Frequency domain analysis
/ Mechanical Engineering
/ Nonlinear dynamics
/ Permutations
/ Roller bearings
/ Sequences
/ Stability
/ Time domain analysis
/ Time measurement
/ Time series
/ Time-frequency analysis
/ Vibration
2024
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MHTFPE2D: two-dimensional multi-scale hierarchical time–frequency permutation entropy for complexity measurement
by
Bao, Jinlong
, Pan, Haiyang
, Zheng, Jinde
, Cheng, Jian
, Tong, Jinyu
in
Automotive Engineering
/ Classical Mechanics
/ Complexity
/ Control
/ Datasets
/ Dynamical Systems
/ Engineering
/ Entropy
/ Fault diagnosis
/ Frequency domain analysis
/ Mechanical Engineering
/ Nonlinear dynamics
/ Permutations
/ Roller bearings
/ Sequences
/ Stability
/ Time domain analysis
/ Time measurement
/ Time series
/ Time-frequency analysis
/ Vibration
2024
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MHTFPE2D: two-dimensional multi-scale hierarchical time–frequency permutation entropy for complexity measurement
Journal Article
MHTFPE2D: two-dimensional multi-scale hierarchical time–frequency permutation entropy for complexity measurement
2024
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Overview
As a nonlinear dynamic index, hierarchical permutation entropy (HPE) can effectively represent the complexity change of time series. However, HPE only focuses on extracting time domain information and ignoring the rich information in frequency domain. Meanwhile, HPE is greatly influenced by the length of time series and has poor stability. To address these limitations, a two-dimensional hierarchical time–frequency permutation entropy (HTFPE
2D
) is proposed based on the definition of two-dimensional permutation entropy, and its purpose is to combine time-domain and frequency-domain information. To consider the time–frequency information of the multi-scale low-frequency sequences, the two-dimensional multi-scale hierarchical time–frequency permutation entropy (MHTFPE
2D
) is further established. MHTFPE
2D
allows for the synthesis of multidimensional effective information and leads to better feature extraction. Based on the advantages of the MHTFPE
2D
, a new fault diagnosis method of rolling bearing is developed by combining the MHTFPE
2D
and GOA-SVM. The proposed fault diagnosis method is validated by using the public rolling bearing datasets of CRWU and our rolling bearing datasets of Anhui University of Technology. The comparison results demonstrate that the proposed method achieves high fault identification accuracy, stability and robustness.
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