会议专题

Condition Monitoring of Rolling Bearings using Statistical Linguistic Analysis

  Defective rolling bearings generally provoke a demonstration of nonstationary and nonlinear properties. As a result, condition monitoring of a rolling bearing seems challenging due to difficulties in fault feature extraction. This study introduces statistical linguistic analysis (SLA) to investigate rolling bearing vibration data. By SLA, original vibration data are allowed to be distilled into a rank index sequence, which preserves fundamental dynamics hidden in the original data. Afterwards, a correlation coefficient is defined for detecting a change of conditions of rolling bearings. Consequently, this study develops a novel method for condition monitoring or rolling bearings using SLA. Moreover, the feasibility of the proposed method is assessed by using a set of full-lifecycle vibration data from a realistic rolling bearing. The results showed that the proposed method has the capability of detecting a change of running conditions of rolling bearings.

rolling bearing condition monitoring statistical linguistic analysis rank index

Jinshan Lin Chunhong Dou

School of Mechatronics and Vehical Engineering, No. 5147 Dong Feng Dong Street, Weifang, China School of Information and Control Engineering, No. 5147 Dong Feng Dong Street, Weifang, China

国际会议

2015 Joint International Mechanical,Electronic and Information Technology Conference(JIMET 2015)(2015 联合国际机械,电子与信息技术国际会议)

重庆

英文

1182-1185

2015-12-18(万方平台首次上网日期,不代表论文的发表时间)