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Improved VMD for feature visualization to identify wheel set bearing fault of high speed locomotive

机译:改进的VMD用于特征可视化,以识别高速机车的轮式轴承故障

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As a critical component of high-speed locomotive, wheel set bearing fault identification and prognosis based on vibration analysis has attracted an increasing attention in recent years. However, heavy background noise and adverse working conditions make it difficult to excavate the hidden weak fault feature. Variational Mode Decomposition (VMD), which can extract the Intrinsic Mode Functions from the non-stationary signal, brings a feasible method. However, the inaccurate pre-set mode number may lead to information loss or over decomposition problem. In this paper, an improved VMD method via correlation coefficient is proposed to automatically extract modes. To overcome the information loss problem, the appropriate mode number is determined by the criterion of approximate complete reconstruction. Then the similar modes are combined to solve the over decomposition problem according to the similarity of their envelops. Finally, an application to wheel set bearing fault of high speed locomotive verify the validity of the proposed method.
机译:作为高速机车的关键组成部分,基于振动分析的轮式轴承故障识别和预后在近年来引起了越来越多的关注。但是,沉重的背景噪音和不利的工作条件使得难以挖掘隐藏的弱故障特征。变分模式分解(VMD),可以从非静止信号中提取内部模式功能,带来了可行的方法。但是,不准确的预设置模式号码可能导致信息丢失或过度分解问题。本文提出了一种通过相关系数的改进的VMD方法来自动提取模式。为了克服信息丢失问题,通过近似完全重建的标准来确定适当的模式编号。然后将类似的模式组合以根据包围的相似性来解决过于分解问题。最后,高速机车的轮式轴承故障应用验证了所提出的方法的有效性。

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