Research on a Nonlinear Dynamic Incipient Fault Detection Method for Rolling Bearings
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Jie Sun | Lei Guo | Xiaotian Bai | Jin Guo | Shi Huaitao | Zhenpeng Liu | Huaitao Shi | X. Bai | Jin Guo | Lei Guo | Jie Sun | Zhenpeng Liu
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