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Phase-based spectrum analysis method for identifying weak harmonics

机译:识别弱谐波的基于相的频谱分析方法

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摘要

Fault characteristic frequency extraction is an important means for the fault diagnosis of rotating machineries. Traditional signal processing methods commonly use the amplitude information of signals to detect damages. However, when the amplitudes of characteristic frequencies are weak, the recognition effects of traditional methods may be unsatisfactory. Therefore, this paper proposes the phase-based enhanced phase waterfall plot (EPWP) method and frequency equal ratio line (FERL) method for identifying weak harmonics. Taking a cracked rotor as an example, the characteristic frequency detection performances of the EPWP and FERL methods are compared with that of the traditional signal processing methods namely fast Fourier transform, short-time Fourier transform, discrete wavelet transform, continuous wavelet transform, ensemble empirical mode decomposition, and Hilbert-Huang transform. Research results demonstrate that the effects of EPWP and FERL for the recognitions of weak harmonics which are contained in steady signals and transient signals are better than that of the traditional signal processing methods. The accurate identification of weak characteristic frequencies in the vibration signals can provide an important reference for damage detections and improve the diagnostic accuracy.
机译:故障特征频率提取是旋转机械故障诊断的重要手段。传统的信号处理方法通常使用信号的幅度信息来检测损坏。然而,当特征频率的幅度较弱时,传统方法的识别效果可能是不令人满意的。因此,本文提出了基于相的增强相瀑布图(EPWP)方法和频率等比线(FERL)方法,用于识别弱谐波。以裂缝的转子为例,将EPWP和FERL方法的特征频率检测性能与传统信号处理方法的特征频率检测性能进行比较,即快速傅里叶变换,短时傅里叶变换,离散小波变换,连续小波变换,集合经验模式分解,以及Hilbert-Huang变换。研究结果表明,EPWP和FERL对稳定信号的识别效应,其稳定信号和瞬态信号均优于传统信号处理方法的弱谐波。振动信号中较弱的特性频率的精确识别可以为损坏检测提供重要参考,提高诊断准确性。

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