Extraction of repetitive transients with frequency domain multipoint kurtosis for bearing fault diagnosis
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Baoxiang Wang | Peng Sun | Lei Qu | Yuhe Liao | Baoxiang Wang | Y. Liao | L. Qu | Peng Sun
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