ObjectiveIn response to challenges such as large sampling data. extended diagnosis time. and subjective fault feature selection in traditional bearing fault diagnosis. a CS-DMKELM intelligent diagnosis model for rolling bearings is proposed based on compressed sensing(CS) and deep multi-kernel extreme learning machine(D-MKELM) theory. https://www.roomyroomers.shop/product-category/arm-chairs/
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