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Bearing fault diagnosis of direct-drive wind turbines using multiscale filtering spectrum

机译:基于多尺度滤波谱的直驱风机轴承故障诊断

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Bearing fault diagnosis of direct-drive (i.e., no gearbox) wind turbines is a challenging issue due to the varying shaft rotating frequency (SRF) caused by the erratic wind environment. To solve the spectrum smearing problem of the SRF-related components and remove the disturbances of the SRF-unrelated components in a measured signal, this paper proposes a novel method, called multiscale filtering spectrum (MFS), to obtain the weighted energy distribution of the mono-component signals within a local order range based on the Vold-Kalman filter (VKF). First, the instantaneous SRF of the wind turbine is estimated from a generator current signal. Then, a VKF-based multiscale filter bank is designed according to the center frequencies corresponding to the SRF at different scales. The mono-component signals whose frequencies are continuous multipliers of the SRF are subsequently extracted from the envelope of the measured current or vibration signal. Finally, a weighted energy spectrum is constructed within the selected order range, from which possible bearing fault characteristic orders can be identified. Simulation and experiment results show that the proposed new MFS method can enhance the characteristic orders and suppress the noise and, therefore, has better performance than the traditional angular resampling method for bearing fault diagnosis of direct-drive wind turbines under varying speed conditions.
机译:由于由不稳定的风环境引起的轴旋转频率(SRF)变化,直接驱动(即,无齿轮箱)风力涡轮机的轴承故障诊断是一个具有挑战性的问题。为了解决SRF相关分量的频谱拖尾问题并消除测量信号中SRF不相关分量的干扰,本文提出了一种新的方法,称为多尺度滤波谱(MFS),用于获得SRF相关分量的加权能量分布。基于Vold-Kalman滤波器(VKF)的本地阶范围内的单分量信号。首先,根据发电机电流信号估算风力涡轮机的瞬时SRF。然后,根据不同尺度下与SRF相对应的中心频率,设计了基于VKF的多尺度滤波器组。随后从测量的电流或振动信号的包络中提取频率为SRF连续倍数的单分量信号。最后,在选择的阶数范围内构建加权能谱,从中可以确定可能的轴承故障特征阶数。仿真和实验结果表明,所提出的新的MFS方法可以提高特征阶数和抑制噪声,因此在变速条件下比传统的角度重采样方法具有更好的性能,可用于直接驱动风力涡轮机的轴承故障诊断。

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