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Time–frequency envelope analysis-based sub-band selection and probabilistic support vector machines for multi-fault diagnosis of low-speed bearings
M. M. Manjurul Islam
, Jong-Myon Kim
School of Computing, Eng & Intel. Sys
Faculty Of Computing, Eng. & Built Env.
Research output
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Contribution to journal
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Article
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peer-review
14
Citations (Scopus)
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Dive into the research topics of 'Time–frequency envelope analysis-based sub-band selection and probabilistic support vector machines for multi-fault diagnosis of low-speed bearings'. Together they form a unique fingerprint.
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Engineering
Gaussians
100%
Fault Diagnosis
100%
Prior Process
100%
Rolling Element
100%
Feature Space
100%
Support Vector Machine
100%
Pattern Recognition
50%
Acoustic Emission
50%
Experimental Result
50%
Classification Accuracy
50%
Time Domain
50%
Frequency Domain
50%
Probability Estimation
50%
Posterior Probability
50%
Data Sample
50%
Estimation Procedure
50%
Computer Science
Support Vector Machine
100%
Fault Diagnosis
100%
Band Selection
100%
Experimental Result
14%
Classification Accuracy
14%
Feature Space
14%
wavelet packet transform
14%
acoustic emission signal
14%
binary classifier
14%
Probability Estimation
14%
Overlapped Feature Space
14%
Estimation Procedure
14%
Posterior Probability
14%
Pattern Recognition
14%