학술논문

A fault diagnosis method of belt conveyor
Document Type
article
Source
Gong-kuang zidonghua, Vol 46, Iss 4, Pp 81-84 (2020)
Subject
belt conveyor
fault diagnosis
synthetic minority oversampling technique
deep belief network
Mining engineering. Metallurgy
TN1-997
Language
Chinese
ISSN
1671-251X
1671-251x
Abstract
Aiming at problems of insufficient fault state sample data and low accuracy in fault diagnosis of belt conveyor by traditional shallow neural network, a fault diagnosis method of belt conveyor based on synthetic minority oversampling technique (SMOTE) and deep belief network (DBN) was proposed. Fault state sample data of belt conveyor is generated by SMOTE to overcome imbalance distribution of the sample data. The sample data is input into DBN, fault features in the data are extracted by means of unsupervised layer-by-layer training, and fault diagnosis ability is optimized by means of supervised fine-tuning to achieve accurate fault diagnosis of belt conveyor. The simulation results show that the method improves fault diagnosis accuracy of belt conveyor.