From Gaussian Distribution to Weibull Distribution

Xu Jiajin, Gao Zhentong
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Abstract

The Gaussian distribution is one of the most widely used statistical distributions, but there are a lot of data that do not conform to Gaussian distribution. For example, structural fatigue life is mostly in accordance with the Weibull distribution rather than the Gaussian distribution, and the Weibull distribution is in a sense a more general full state distribution than the Gaussian distribution. However, the biggest obstacle affecting the application of the Weibull distribution is the complexity of the Weibull distribution, especially the estimation of its three parameters is relatively difficult. In order to avoid this difficulty, people used to solve this problem by taking the logarithm to make the data appear to be more consistent with the Gaussian distribution. But in fact, this approach is problematic, because from the physical point of view, the structure of the data has changed and the physical meaning has changed, so it is not appropriate to use logarithmic Gaussian distribution to fit the original data after logarithm. The author thinks that Z.T. Gao method can give the estimation of three parameters of Weibull distribution conveniently, which lays a solid mathematical foundation for Weibull distribution to directly fit the original data.
从高斯分布到威布尔分布
高斯分布是应用最广泛的统计分布之一,但是有很多数据不符合高斯分布。例如,结构疲劳寿命大多符合威布尔分布而不是高斯分布,威布尔分布在某种意义上是比高斯分布更一般的全状态分布。然而,影响威布尔分布应用的最大障碍是威布尔分布的复杂性,特别是其三个参数的估计比较困难。为了避免这个困难,人们过去常常通过取对数来解决这个问题,使数据看起来更符合高斯分布。但实际上,这种方法是有问题的,因为从物理角度来看,数据的结构发生了变化,物理意义也发生了变化,所以用对数高斯分布对原始数据进行对数后拟合是不合适的。作者认为,该方法可以方便地给出威布尔分布的三个参数的估计,为威布尔分布直接拟合原始数据奠定了坚实的数学基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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