Physical Science & Biophysics Journal (PSBJ)

ISSN: 2641-9165

Research Article

Research on Rolling Bearing Fault Feature Extraction and Diagnosis Method Based on Image Processing

Authors: Wang C , Sun Y* and Wang X

DOI: 10.23880/psbj-16000184

Abstract

In economic construction, there are many large and important machinery and equipment. Some equipment will continue to work in a harsh working environment, so many and various failures will occur. Rolling bearings are one of the widely used parts in rotating machinery. They are generally composed of inner ring, outer ring, rolling element and holding. The frame is composed of four parts, the failure of the bearing is particularly important, and its safe operation has a vital impact on the entire equipment, Feature extraction is the key link in the subsequent identification of fault types, Although feature extraction in the time domain and frequency domain is effective, it is also necessary to find new feature extraction methods in new areas. On the basis of the snowflake image obtained by using the principle of SDP(Symmetrized Dot Pattern), a method for extracting fault features of rolling bearings based on image processing is proposed, and the snowflake standard map for different working conditions is constructed. The number of snowflake images under different working conditions is different. The binary matrix of the test image is compared with it, and then classified and identified. Finally, the algorithm is validated, and the ideal result is obtained to verify its rationality and effectiveness.

Keywords: Image processing; Rolling bearing; Symmetrized Dot Pattern; Feature extraction; Fault diagnosis

View PDF

Chat with us on WhatsApp

Welcome to Medwin Publishers. How can we help you today?