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Qin et al., 2016 - Google Patents

Weak transient fault feature extraction based on an optimized Morlet wavelet and kurtosis

Qin et al., 2016

Document ID
1481072994149177585
Author
Qin Y
Xing J
Mao Y
Publication year
Publication venue
Measurement Science and Technology

External Links

Snippet

Aimed at solving the key problem in weak transient detection, the present study proposes a new transient feature extraction approach using the optimized Morlet wavelet transform, kurtosis index and soft-thresholding. Firstly, a fast optimization algorithm based on the …
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