A Feature Extraction Method Based on Sparse Filtering With Local Structure Preserved and Its Applications to Bearing Fault Diagnosis
Unsupervised feature learning, as a promising tool for extracting features automatically, overcomes shortcomings of traditional feature extraction methods which generally take plenty of effort on designing features. Among various unsupervised feature learning methods, sparse filtering is an efficien...
Main Authors: | Zhiqiang Zhang, Qingyu Yang, Wenxing Zhou |
---|---|
Format: | Article |
Language: | English |
Published: |
IEEE
2019-01-01
|
Series: | IEEE Access |
Subjects: | |
Online Access: | https://ieeexplore.ieee.org/document/8890913/ |
Similar Items
-
Unsupervised Mechanical Fault Feature Learning Based on Consistency Inference-Constrained Sparse Filtering
by: Ran Wang, et al.
Published: (2020-01-01) -
Multidimensional Blind Deconvolution Method Based on Cross-Sparse Filtering for Weak Fault Diagnosis
by: Shan Wang, et al.
Published: (2020-01-01) -
Feature extraction of the weak periodic signal of rolling element bearing’ early fault based on shift invariant sparse coding
by: Baoping Shang, et al.
Published: (2018-06-01) -
Adaptive machinery fault diagnosis based on improved shift-invariant sparse coding
by: Limin Li
Published: (2017-06-01) -
An intelligent fault diagnosis method of rotating machinery using L1-regularized sparse filtering
by: Weiwei Qian, et al.
Published: (2018-12-01)