Estimation of the Multicomponent Stress-Strength Reliability Model Under the Topp-Leone Distribution: Applications, Bayesian and Non-Bayesian Assessement

M. Rasekhi, M. Saber, H. Yousof, Emadeldin I. A. Ali
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Abstract

The advantages of applying multicomponent stress-strength models lie in their ability to provide a comprehensive and accurate analysis of system reliability under real-world conditions. By accounting for the interactions between different stress components and identifying critical weaknesses, engineers can make informed decisions, leading to safer and more reliable designs. The primary emphasis of this research is placed on the Bayesian and classical estimations of a multicomponent stress-strength reliability model that is derived from the bounded Topp Leone distribution. It is presumable that both stress and strength follow a Topp Leone distribution, but the shape parameters of each variable differ, and the scale parameters (which determine where the variable is bounded) remain the same. Statisticians utilize approaches such as maximum likelihood paired with parametric and non-parametric bootstrap, as well as Bayesian methods, in order to evaluate the dependability of a system. Bayesian methods are also utilized. Simulation studies are carried out with the intention of establishing the degree of precision that may be achieved by employing the various methods of estimating. For the sake of this example, two genuine data sets are dissected and examined in detail.
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Topp-Leone 分布下的多成分应力-强度可靠性模型估计:应用、贝叶斯和非贝叶斯评估
应用多成分应力-强度模型的优势在于,它们能够在实际条件下对系统的可靠性进行全面而准确的分析。通过考虑不同应力成分之间的相互作用并找出关键弱点,工程师可以做出明智的决策,从而实现更安全、更可靠的设计。本研究的主要重点是对有界 Topp Leone 分布推导出的多成分应力-强度可靠性模型进行贝叶斯和经典估计。假定应力和强度都遵循 Topp Leone 分布,但每个变量的形状参数不同,尺度参数(决定变量的有界位置)保持不变。统计学家利用最大似然法、参数和非参数自举法以及贝叶斯法等方法来评估系统的可靠性。贝叶斯方法也得到了利用。进行模拟研究的目的是确定采用各种估计方法可能达到的精确程度。在本示例中,将对两组真实数据进行详细分析和研究。
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