Wan Shuting, Zhang Xiong, Dou Longjiang
Department of Mechanical Engineering, North China Electric Power University, Baoding 071003, China.
Entropy (Basel). 2018 Apr 9;20(4):260. doi: 10.3390/e20040260.
The fast spectrum kurtosis (FSK) algorithm can adaptively identify and select the resonant frequency band and extract the fault feature via the envelope demodulation method. However, the FSK method has some limitations due to its susceptibility to noise and random knocks. To overcome this shortage, a new method is proposed in this paper. Firstly, we use the binary wavelet packet transform (BWPT) instead of the finite impulse response (FIR) filter bank as the frequency band segmentation method. Following this, the Shannon entropy of each frequency band is calculated. The appropriate center frequency and bandwidth are chosen for filtering by using the inverse of the Shannon entropy as the index. Finally, the envelope spectrum of the filtered signal is analyzed and the faulty feature information is obtained from the envelope spectrum. Through simulation and experimental verification, we found that Shannon entropy is-to some extent-better than kurtosis as a frequency-selective index, and that the Shannon entropy of the binary wavelet packet transform method is more accurate for fault feature extraction.
快速谱峭度(FSK)算法能够通过包络解调方法自适应地识别和选择共振频带并提取故障特征。然而,FSK方法由于易受噪声和随机敲击的影响而存在一些局限性。为克服这一不足,本文提出了一种新方法。首先,我们使用二进小波包变换(BWPT)代替有限脉冲响应(FIR)滤波器组作为频带分割方法。接着,计算每个频带的香农熵。以香农熵的倒数为指标选择合适的中心频率和带宽进行滤波。最后,分析滤波后信号的包络谱并从包络谱中获取故障特征信息。通过仿真和实验验证,我们发现香农熵作为频率选择指标在一定程度上优于峭度,并且二进小波包变换方法的香农熵在故障特征提取方面更准确。