阿尔法幂 Muth-G 分布及其在生存和可靠性分析中的应用

Pub Date : 2023-12-01 DOI:10.1515/ms-2023-0116
J. T. Eghwerido, Ikechukwu Friday Agu
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引用次数: 0

摘要

摘要 对分布系列进行概括,为参数估计和研究各领域数据集的行为提供一种简单而有效的算法,已引起人们的极大兴趣。这种模型具有极大的优势,如其灵活的性质和易于导出的回归形式。文献中介绍了各种广义的分布系列。尽管这些分布有其优点,但由于模型中的参数较多,它们仍有一些局限性。因此,参数估计往往变得繁琐。因此,本研究引入了具有明确参数的连续分布的 alpha power Muth 或 Teissier-G 系列,并获得了联合渐进式 II 型普查方案及其可靠性度量。此外,我们还获得了 APTG 模型的全局和局部影响因素。我们利用实际数据和模拟数据对所引入模型的数值应用进行了评估。结果表明,与现有的一些模型相比,α幂 Muth 或 Teissier-G 系列分布对两个数据集的拟合效果最好。
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The Alpha Power Muth-G Distributions and Its Applications in Survival and Reliability Analyses
ABSTRACT The generalization of the family of distributions that could provide a simple, and efficient algorithm for parameter estimation and study of the behavior of datasets from various fields has received significant interest. Such a model has enormous advantages, such as its flexible nature, and the regression form can easily be derived. In the literature, various generalized families of distributions have been introduced. Despite the merits of these distributions, they still have some limitations due to many parameters in the model. Thus, the estimation of parameters often becomes cumbersome. Therefore, this study introduced the alpha power Muth or Teissier-G family of continuous distributions with well-defined parameters, and obtained the joint progressive type-II censoring scheme and their reliability measures. Furthermore, we obtained the global and local influences of the APTG model. We used real-life and simulated data to evaluate the numerical applications of the introduced model. The results show that the alpha power Muth or Teissier-G family of distributions gave the best fits to both datasets than some existing models.
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