Li Chuan, Sanchez Vinicio, Zurita Grover, Cerrada Lozada Mariela, Cabrera Diego
Research Center of System Health Maintenance, Chongqing Technology and Business University, Chongqing 400067, China; Department of Mechanical Engineering, Universidad Politécnica Salesiana, Cuenca, Ecuador.
Department of Mechanical Engineering, Universidad Politécnica Salesiana, Cuenca, Ecuador.
ISA Trans. 2016 Jan;60:274-284. doi: 10.1016/j.isatra.2015.10.014. Epub 2015 Nov 3.
Healthy rolling element bearings are vital guarantees for safe operation of the rotating machinery. Time-frequency (TF) signal analysis is an effective tool to detect bearing defects under time-varying shaft speed condition. However, it is a challenging work dealing with defective characteristic frequency and rotation frequency simultaneously without a tachometer. For this reason, a technique using the generalized synchrosqueezing transform (GST) guided by enhanced TF ridge extraction is suggested to detect the existence of the bearing defects. The low frequency band and the resonance band are first chopped from the Fourier spectrum of the bearing vibration measurements. The TF information of the lower band component and the resonance band envelope are represented using short-time Fourier transform, where the TF ridge are extracted by harmonic summation search and ridge candidate fusion operations. The inverse of the extracted TF ridge is subsequently used to guide the GST mapping the chirped TF representation to the constant one. The rectified TF pictures are then synchrosqueezed as sharper spectra where the rotation frequency and the defective characteristic frequency can be identified, respectively. Both simulated and experimental signals were used to evaluate the present technique. The results validate the effectiveness of the suggested technique for the bearing defect detection.
健康的滚动轴承是旋转机械安全运行的重要保证。时频(TF)信号分析是在轴转速随时间变化的情况下检测轴承缺陷的有效工具。然而,在没有转速计的情况下,同时处理缺陷特征频率和旋转频率是一项具有挑战性的工作。因此,提出了一种基于增强时频脊提取的广义同步挤压变换(GST)技术来检测轴承缺陷的存在。首先从轴承振动测量的傅里叶频谱中截取低频带和共振带。利用短时傅里叶变换表示低频带分量和共振带包络的时频信息,通过谐波求和搜索和脊候选融合操作提取时频脊。随后,利用提取的时频脊的逆来引导GST将啁啾时频表示映射为常数时频表示。然后将校正后的时频图同步挤压为更清晰的频谱,可以分别识别旋转频率和缺陷特征频率。利用模拟信号和实验信号对该技术进行了评估。结果验证了所提技术在轴承缺陷检测中的有效性。