As the amount of data generated by monitoring the condition of rolling bearings is increasing, it has become a research hotspot in\nrecent years to dig valuable information from massive data and identify unknown bearing states. In Internet technology, the\ncollaborative filtering recommendation technology provides users with an intelligent means of filtering information. Aiming at\nthe difficulty in designing the recommendation system scoring matrix in the field of fault diagnosis, we first obtain the bearing\nfeature matrix based on the wavelet frequency band energy and then design a scoring matrix that accurately describes the bearing\nstate; finally, we design a joint scoring matrix for bearing state identification by combining the matrix of these two different\ncharacteristics. After that, a collaborative filtering recommendation system for bearing state identification is proposed based on\nmatrix factorization-based collaborative filtering and gradient descent algorithm. *is method is used to identify and verify two\ntypes of fault data of rolling bearing: different position faults and different types of faults on the outer ring. *e results show that\nthe accuracy of the two identifications has reached more than 90%.
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