Author:
Liu Jing,Wang Linfeng,Zhou Li,Wang Liming,Shi Zhifeng
Abstract
Local faults can be produced in ball bearings during their manufacturing process. An efficient, fast and accurate
local fault detection method can help improve the quality of ball bearings. To overcome this problem, an intelligent
detection system for a ball bearing with the local faults is developed based on the NI LabVIEW software. This
system includes the determination of bearing fault parameters, signal acquisition, envelope analysis, time-domain
parameter analysis and bearing fault status modules. In this system, the frequency-domain feature method is based
on the envelope demodulation analysis, the effective statistical indexes, and the Pearson correlation coefficient.
The frequency-domain feature method is used to determine the threshold range for each fault level in the system.
This system can in turn be used to determine the fault location and sizes for the ball bearings. A case study for the
calculation and analysis for the frequency and time-domain acceleration is presented to predict the location and
size of the local faults in a ball bearing. The test data from the Case Western Reserve University Bearing Data
Center is used to verify the developed intelligent detection system for local faults in the ball bearing. The results
show that the proposed detection system can be used to detect the local fault in the ball bearings.
Publisher
International Institute of Acoustics and Vibration (IIAV)
Cited by
1 articles.
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1. Investigation into Bearing Fault Classification using Various Feature Set Combinations in KNN;2022 5th International Conference on Multimedia, Signal Processing and Communication Technologies (IMPACT);2022-11-26