Gao Zheyu, Lin Jing, Wang Xiufeng, Xu Xiaoqiang
Shanxi Key Laboratory of Mechanical Product Quality Assurance and Diagnostics, Xi'an Jiaotong University, Xi'an 710049, China.
State Key Laboratory of Manufacturing System Engineering, Xi'an Jiaotong University, Xi'an 710049, China.
Materials (Basel). 2017 May 24;10(6):571. doi: 10.3390/ma10060571.
Rolling bearings are widely used in rotating equipment. Detection of bearing faults is of great importance to guarantee safe operation of mechanical systems. Acoustic emission (AE), as one of the bearing monitoring technologies, is sensitive to weak signals and performs well in detecting incipient faults. Therefore, AE is widely used in monitoring the operating status of rolling bearing. This paper utilizes Empirical Wavelet Transform (EWT) to decompose AE signals into mono-components adaptively followed by calculation of the correlated kurtosis (CK) at certain time intervals of these components. By comparing these CK values, the resonant frequency of the rolling bearing can be determined. Then the fault characteristic frequencies are found by spectrum envelope. Both simulation signal and rolling bearing AE signals are used to verify the effectiveness of the proposed method. The results show that the new method performs well in identifying bearing fault frequency under strong background noise.
滚动轴承广泛应用于旋转设备中。轴承故障检测对于保证机械系统的安全运行至关重要。声发射(AE)作为轴承监测技术之一,对微弱信号敏感,在早期故障检测中表现良好。因此,AE被广泛用于监测滚动轴承的运行状态。本文利用经验小波变换(EWT)将AE信号自适应地分解为单分量,然后在这些分量的特定时间间隔内计算相关峭度(CK)。通过比较这些CK值,可以确定滚动轴承的共振频率。然后通过频谱包络找到故障特征频率。采用仿真信号和滚动轴承AE信号对所提方法的有效性进行验证。结果表明,该新方法在强背景噪声下识别轴承故障频率方面表现良好。