基于广义指数分布的近中位数RSS数据估计系统可靠性

A. Hassan, Rasha S. Elshaarawy, Rodney Onyango, H. Nagy
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引用次数: 3

摘要

在这项工作中,我们展示了当应力(Y)和强度(X)分布是具有共同尺度参数的广义指数时,如何估计应力强度(SS)可靠性。从近代排序集抽样(NRSS)和中位数排序集抽样(MRRS)两方面考虑了SS可靠性估计。当使用相同的NRSS技术收集应力和强度随机变量的样本时,我们获得了可靠性(R)的估计。此外,当应力分布数据仅为奇/偶集大小的MRSS模式,强度分布数据为NRSS模式,反之亦然时,导出了可靠性估计。仿真结果用于评估和理解各种估计器对所建议方案的充分性。基于仿真结果,我们发现基于nrss的应力强度可靠度估计比基于mrss的应力强度可靠度估计更有效。实际数据的分析用于实现推荐的估计器。
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Estimating System Reliability Using Neoteric and Median RSS Data for Generalized Exponential Distribution
In this work, we show how to estimate stress strength (SS) reliability when the stress (Y) and strength (X) distributions are generalized exponentials with a common scale parameter. The SS reliability estimator is considered in view of neoteric ranked set sampling (NRSS) and median ranked set sampling (MRRS). We acquire an estimate of the reliability (R) when such samples of the stress and strength random variables are gathered using the same NRSS technique. Furthermore, the reliability estimator is derived when the stress distribution data are in the pattern of MRSS with just an odd/even set size and the strength distribution data are derived from NRSS and vice versa. The simulation results are used to evaluate and understand the adequacy of a variety of estimators for the suggested schemes. Based on our simulated results, we found that NRSS-based stress strength reliability estimates are more efficient than MRSS-based stress strength reliability estimates. The analysis of real-world data is used to implement the recommended estimators.
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