Dependent and independent sampling techniques for modeling radiation and failure data

IF 1.7 4区 综合性期刊 Q2 MULTIDISCIPLINARY SCIENCES
Fatimah A. Almulhim , Dalia Kamal Alnagar , ELsiddig Idriss Mohamed , Nuran M. Hassan
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引用次数: 0

Abstract

Ordered set sampling techniques are among the most popular current techniques used in estimation, especially for small sample sizes, and their efficiency has been proven in many articles as the best estimators for unknown parameters for several distributions. Systematic ranked set sampling and centralized ranked set sampling are two recently developed techniques in ranked set sampling that fall under dependent sampling techniques. The probability density function for each using the inverse Lomax distribution is extracted. Furthermore, the maximum likelihood method is used to estimate the values of the Inverse Lomax distribution parameters using several ordered set sampling techniques. Several of these techniques are new and have not been used in various distributions. There are two types of ranked set sampling techniques that were used: independent set sampling includes ranked set sampling (RSS), and dependent set sampling includes neoteric ranked set sampling (NRSS), extended neoteric ranked set sampling (ENRSS), systematic ranked set sampling (SRSS), and centralized ranked set sampling (CRSS) In the Monto Carlo simulation with varying sample sizes, the NRSS, ENRSS, SRSS, and CRSS estimators outperformed the RSS estimator. Additionally, the ENRSS method is more effective than competing RSS-based techniques. It has also been demonstrated that CRSS is not as effective as other techniques, particularly for large mean square errors. Finally, two real datasets related to radiation and failure rate show how the distribution can change depending on the sampling techniques.
辐射和故障数据建模的依赖和独立采样技术
有序集抽样技术是目前估计中最流行的技术之一,特别是对于小样本容量,其效率已在许多文章中被证明是几种分布的未知参数的最佳估计器。系统排序集抽样和集中排序集抽样是最近发展起来的两种排序集抽样技术,属于依赖抽样技术的范畴。利用反Lomax分布提取了每一种的概率密度函数。在此基础上,利用最大似然方法,利用几种有序集采样技术估计了反Lomax分布参数的值。其中一些技术是新的,并没有在各种发行版中使用。使用了两种类型的排名集抽样技术:独立集抽样包括排名集抽样(RSS),依赖集抽样包括近代排名集抽样(NRSS),扩展近代排名集抽样(ENRSS),系统排名集抽样(SRSS)和集中排名集抽样(CRSS)。在不同样本大小的蒙特卡罗模拟中,NRSS, ENRSS, SRSS和CRSS估计器优于RSS估计器。此外,ENRSS方法比竞争对手的基于rss的技术更有效。也证明了CRSS不如其他技术有效,特别是对于较大的均方误差。最后,两个与辐射和故障率相关的真实数据集显示了分布如何随采样技术而变化。
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来源期刊
自引率
5.90%
发文量
130
审稿时长
16 weeks
期刊介绍: Journal of Radiation Research and Applied Sciences provides a high quality medium for the publication of substantial, original and scientific and technological papers on the development and applications of nuclear, radiation and isotopes in biology, medicine, drugs, biochemistry, microbiology, agriculture, entomology, food technology, chemistry, physics, solid states, engineering, environmental and applied sciences.
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