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High-Speed Spindle Fault Diagnosis with the Empirical Mode Decomposition and Multiscale Entropy Method

机译:基于经验模态分解和多尺度熵的高速主轴故障诊断

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The root mean square (RMS) value of a vibration signal is an important indicator used to represent the amplitude of vibrations in evaluating the quality of high-speed spindles. However, RMS is unable to detect a number of common fault characteristics that occur prior to bearing failure. Extending the operational life and quality of spindles requires reliable fault diagnosis techniques for the analysis of vibration signals from three axes. This study used empirical mode decomposition to decompose signals into intrinsic mode functions containing a zero-crossing rate and energy to represent the characteristics of rotating elements. The MSE curve was then used to identify a number of characteristic defects. The purpose of this research was to obtain vibration signals along three axes with the aim of extending the operational life of devices included in the product line of an actual spindle manufacturing company.
机译:振动信号的均方根(RMS)值是重要的指标,用于表示评估高速主轴质量时的振动幅度。但是,RMS无法检测轴承失效之前发生的许多常见故障特征。要延长主轴的使用寿命和质量,就需要可靠的故障诊断技术来分析来自三个轴的振动信号。这项研究使用经验模式分解将信号分解为固有模式函数,该函数包含过零率和能量来表示旋转元素的特征。然后将MSE曲线用于识别许多特征缺陷。这项研究的目的是获取三个轴上的振动信号,以延长实际主轴制造公司产品线中所含设备的使用寿命。

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