Title
Application Of Adaptive Momeda With Iterative Autocorrelation To Enhance Weak Features Of Hoist Bearings
Abstract
Low-speed hoist bearings are characterized by fault features that are weak and difficult to extract. Multipoint optimal minimum entropy deconvolution adjusted (MOMEDA) is an effective method for extracting periodic pulses in a signal. However, the decomposition effect of MOMEDA largely depends on the selected pulse period and filter length. To address these drawbacks of MOMEDA and accurately extract features from the vibration signal of a hoist bearing, an adaptive feature extraction method is proposed based on iterative autocorrelation (IAC) and MOMEDA. To automatically identify the pulse period, a new evaluation index named autocorrelation kurtosis entropy (AKE) was constructed to select the optimal IAC. To eliminate the influence of the filter length on the decomposition effect, an iterative MOMEDA strategy was designed to gradually enhance signal impulse features. The Case Western Reserve University bearing dataset and bearing data from a self-made hoisting test setup were used to verify the effectiveness of IAC-MOMEDA in extracting weak features. Moreover, the capability of IAC-MOMEDA for features extraction of normal bearing vibration signal was further confirmed by field test data.
Year
DOI
Venue
2021
10.3390/e23070789
ENTROPY
Keywords
DocType
Volume
low-speed hoist bearing, weak feature extraction, iterative autocorrelation, autocorrelation kurtosis entropy, multipoint optimal minimum entropy deconvolution adjusted
Journal
23
Issue
ISSN
Citations 
7
1099-4300
0
PageRank 
References 
Authors
0.34
0
4
Name
Order
Citations
PageRank
Tengyu Li100.68
Ziming Kou200.34
Juan Wu300.68
Fen Yang400.68