This paper proposes a joint class metric and sparse representation regularized deep belief network (J‐DBN) method for intelligent fault diagnosis of the rotary equipment. In this novel method, the joint… Click to show full abstract
This paper proposes a joint class metric and sparse representation regularized deep belief network (J‐DBN) method for intelligent fault diagnosis of the rotary equipment. In this novel method, the joint class metric and sparse representation regularized DBN is considered as a pretraining method to extract data features. It combines advantages of both class metric and sparse representation, which can optimize the distance of features in the same class and penalize the distance of features in different classes, and generate sparse features. Specifically, a new metric matrix is constructed to avoid using the same structural parameters for the local structure of each sample. The J‐DBN‐based fault diagnosis is implemented by the pretraining learning method, which contributes to better classification capabilities. Finally, gearbox and bearing fault diagnosis experiments are conducted to validate the effectiveness and the superiority of the proposed method. The results show that the ability of the J‐DBN method to extract features is significantly enhanced, and the clustering of features of the same data is more obvious; furthermore, the proposed method has higher diagnostic accuracy than other fault diagnosis methods.
               
Click one of the above tabs to view related content.