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首页> 外文期刊>Applied Sciences >Fault Diagnosis of a Helical Gearbox Based on an Adaptive Empirical Wavelet Transform in Combination with a Spectral Subtraction Method
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Fault Diagnosis of a Helical Gearbox Based on an Adaptive Empirical Wavelet Transform in Combination with a Spectral Subtraction Method

机译:基于自适应经验小波变换结合谱减法的斜齿轮变速箱故障诊断

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Fault characteristic extraction is attracting a great deal of attention from researchers for the fault diagnosis of rotating machinery. Generally, when a gearbox is damaged, accurate identification of the side-band features can be used to detect the condition of the machinery equipment to reduce financial losses. However, the side-band feature of damaged gears that are constantly disturbed by strong jamming is embedded in the background noise. In this paper, a hybrid signal-processing method is proposed based on a spectral subtraction (SS) denoising algorithm combined with an empirical wavelet transform (EWT) to extract the side-band feature of gear faults. Firstly, SS is used to estimate the real-time noise information, which is used to enhance the fault signal of the helical gearbox from a vibration signal with strong noise disturbance. The empirical wavelet transform can extract amplitude-modulated/frequency-modulated (AM-FM) components of a signal using different filter bands that are designed in accordance with the signal properties. The fault signal is obtained by building a flexible gear for a helical gearbox with ADAMS software. The experiment shows the feasibility and availability of the multi-body dynamics model. The spectral subtraction-based adaptive empirical wavelet transform (SS-AEWT) method was applied to estimate the gear side-band feature for different tooth breakages and the strong background noise. The verification results show that the proposed method gives a clearer indication of gear fault characteristics with different tooth breakages and the different signal-noise ratio (SNR) than the conventional EMD and LMD methods. Finally, the fault characteristic frequency of a damaged gear suggests that the proposed SS-AEWT method can accurately and reliably diagnose faults of a gearbox.
机译:故障特征提取在旋转机械故障诊断中引起了研究人员的广泛关注。通常,当齿轮箱损坏时,可以使用边带特征的准确识别来检测机械设备的状况,以减少经济损失。但是,不断受到强烈干扰干扰的齿轮损坏的边带特征被嵌入背景噪声中。本文提出了一种基于频谱减法(SS)去噪算法和经验小波变换(EWT)相结合的混合信号处理方法,以提取齿轮故障的边带特征。首先,SS用于估计实时噪声信息,用于从具有强烈噪声干扰的振动信号中增强螺旋齿轮箱的故障信号。经验小波变换可以使用根据信号特性设计的不同滤波器频带来提取信号的幅度调制/频率调制(AM-FM)分量。故障信号是通过使用ADAMS软件为螺旋齿轮箱构建柔性齿轮而获得的。实验表明了多体动力学模型的可行性和可用性。基于谱减法的自适应经验小波变换(SS-AEWT)方法用于估计不同断齿和强烈背景噪声的齿轮边带特征。验证结果表明,与常规的EMD和LMD方法相比,所提出的方法可以更清楚地显示出不同断齿和不同信噪比(SNR)的齿轮故障特性。最后,齿轮损坏的故障特征频率表明,提出的SS-AEWT方法可以准确,可靠地诊断齿轮箱的故障。

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