Abstract Local damage detection in bearings focuses on the identification of periodically impulsive components. Popular methods assume presence of either non-Gaussian noise or different frequency band for informative and non-informative… Click to show full abstract
Abstract Local damage detection in bearings focuses on the identification of periodically impulsive components. Popular methods assume presence of either non-Gaussian noise or different frequency band for informative and non-informative impulses, and use statistics to select appropriate band. Here two impulsive sources occupy the same frequency range: a fault-related signal of interest, and non-cyclic noise describing random events during particular technological process (crushing, sieving etc.). The task is formulated as damage detection in presence of non-Gaussian impulsive noise. We propose to use Nonnegative Matrix Factorization of spectrogram for separation of cyclic and non-cyclic impulsive components. Partial information is fused into a single data set for each component. Finally, post-processing is implemented to allow to recover the time series of each component. New method allows to detect and extract impulsive signal (damage in bearing) in presence high amplitude non-cyclic impulsive signal. Moreover, the algorithm allows to properly indicate lack of any damage.
               
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