Aging-Intensity-Based Model Selection and Parameter Estimation on Heavily Censored Data

Jiang Renyan
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引用次数: 1

Abstract

The life distributions of product's components should be built as early as possible since many applications need them. The data for modelling are often heavily censored. In this case, it is a challenging issue to estimate the parameters. This paper proposes a new estimation method to address this issue. The proposed method estimates the shape parameter of a two-parameter life distribution through combining the concept of aging intensity with a semi-parametric smoothing TTT approach. The aging intensity of the Weibull distribution equals to its shape parameter; the smoothing TTT approach can be used to estimate the empirical aging intensity function, from which three representative values of the shape parameter are defined. Fixing each of them, the scale parameter is estimated using a singleparameter maximum likelihood method. In such a way, three distributions are fitted, from which a regression model is built to approximate the non-parametric estimates of the distribution function. The best model is selected based on the values of regression coefficients. Two examples are included to illustrate the appropriateness of the proposed approach.
基于老化强度的重删减数据模型选择与参数估计
应该尽早构建产品组件的生命周期分布,因为许多应用程序都需要它们。用于建模的数据常常经过严格审查。在这种情况下,估计参数是一个具有挑战性的问题。本文提出了一种新的估计方法来解决这一问题。该方法将老化强度的概念与半参数平滑TTT方法相结合,对双参数寿命分布的形状参数进行估计。威布尔分布的时效强度等于其形状参数;采用平滑TTT方法估计经验老化强度函数,并由此定义形状参数的三个代表性值。固定每一个参数,使用单参数最大似然法估计尺度参数。以这种方式,拟合三个分布,从中建立一个回归模型来近似分布函数的非参数估计。根据回归系数的取值选择最佳模型。包括两个例子来说明所建议的方法的适当性。
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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