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Mother wavelet selection in the discrete wavelet transform for condition monitoring of wind turbine drivetrain bearings

机译:离散小波变换中的母子波选择用于风力发电机组传动系统轴承状态监测

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摘要

Although the discrete wavelet transform has been used for diagnosing bearing faults for two decades, most work in this field has been done with test rig data. Since field data starts to be made more available, there is a need to shift into application studies. The choice of mother wavelet, ie, the predefined shape used to analyse the signal, has previously been investigated with simulated and test rig data without consensus of optimal choice in literature. Common between these investigations is the use of the wavelet coefficients' Shannon entropy to find which mother wavelet can yield the most useful features for condition monitoring. This study attempts to find the optimal mother wavelet selection using the discrete wavelet transform. Datasets from wind turbine gearbox accelerometers, consisting of enveloped vibration measurements monitoring both healthy and faulty bearings, have been analysed. The bearing fault frequencies' excitation level has been analysed with 130 different mother wavelets, yielding a definitive measure on their performance. Also, the applicability of Shannon entropy as a ranking method of mother wavelets has been investigated. The results show the discrete wavelet transforms ability to identify faults regardless of mother wavelet used, with the excitation level varying no more than 4%. By analysing the Shannon entropy, broad predictions to the excitation level could be drawn within the mother wavelet families but no direct correlation to the main results. Also, the high computational effort of high order Symlet wavelets, without increased performance, makes them unsuitable.
机译:尽管离散小波变换已用于诊断轴承故障已有二十年了,但该领域的大部分工作还是通过测试装备数据完成的。由于现场数据开始变得更加可用,因此有必要进行应用研究。母小波的选择,即用于分析信号的预定义形状,先前已在模拟和测试装备数据中进行了调查,而文献中并未就最佳选择达成共识。这些研究之间的共同点是使用小波系数的Shannon熵来找出哪个母小波可以产生用于状态监测的最有用的功能。本研究试图使用离散小波变换找到最优的母小波选择。已分析了来自风力涡轮机变速箱加速度计的数据集,包括监测健康和故障轴承的包络振动测量。轴承故障频率的激励水平已通过130个不同的子小波进行了分析,从而确定了它们的性能。而且,已经研究了香农熵作为母小波的排序方法的适用性。结果表明,与使用的母子波无关,离散子波变换能够识别故障,激励水平变化不超过4%。通过分析香农熵,可以在母子波族中得出对激发水平的广泛预测,但与主要结果没有直接关系。同样,高阶Symlet小波的高计算量却没有增加性能,因此不适合使用。

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