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A New Statistical Model for Rolling Element Bearing Fault Signals Based on Alpha-Stable Distribution

机译:基于阿尔法稳定分布的滚动轴承故障信号统计模型

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A new statistical model for rolling element bearing fault signals is proposed based on alpha-stable distribution. Such a non-Gaussian model can accurately describe statistical characteristic of bearing fault signals with impulsive behavior. The characteristic exponent alpha of bearing fault signals with different fault degree is estimated by a stable distribution parameter estimation method. Estimation result explains the bearing fault signals belongs alpha-stable process. At the same time, alpha-stable density of every bearing fault signal fit well the empirical probability density in log-log plots, and their tail possess the same heavy tail behavior. Then the statistical model for different fault degree bearing signals all are valid.
机译:提出了一种基于α稳定分布的滚动轴承故障信号统计模型。这样的非高斯模型可以准确地描述具有冲动行为的轴承故障信号的统计特性。通过稳定的分布参数估计方法估计了不同故障程度的轴承故障信号的特征指数α。估计结果说明轴承故障信号属于α稳定过程。同时,每个轴承故障信号的α稳定密度都很好地拟合了对数对数图中的经验概率密度,并且它们的尾部具有相同的重尾行为。这样,不同故障程度的轴承信号的统计模型都成立了。

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