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引用次数: 30

摘要

固有可用性是可修复系统的重要性能指标,通常通过故障间隔时间和数据恢复时间来估计。从收集的数据中计算固有可用性的点估计的公式是众所周知的。但是由于数据样本量小,计算出的固有可用性的质量值得怀疑。解决方案是在给定的置信水平上使用固有可用性的置信限制,以及点估计器。然而,没有简单的方法来计算计算出的可用性的置信限。实际上,没有足够的方法来计算基于样本数据的固有可用性的置信区间。本文考虑了小随机样本的不确定性。估计的平均故障间隔时间、平均恢复时间和估计的固有可用性被视为随机变量。当故障间隔时间和恢复时间的分布都是指数分布时,可以导出固有可用性的确切置信限。在合理假设的基础上,提出了一种确定数据固有可用性近似置信限的非参数方法,而不假设任何故障间隔时间和恢复时间分布。数值算例验证了该方法的有效性,并与蒙特卡罗模拟结果进行了比较。结果表明,该方法具有较好的工程应用精度。
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Confidence limits on the inherent availability of equipment
The inherent availability, is an important performance index for a repairable system, and is usually estimated from the times-between-failures and the times-to-restore data. The formula for calculating a point estimate of the inherent availability from collected data is well known. But the quality of the calculated inherent availability is suspect because of small data sample sizes. The solution is to use the confidence limits on the inherent availability at a given confidence level, in addition to the point estimator. However, there is no easy way to compute the confidence limits on the calculated availability. Actually, no adequate approach to compute the confidence interval for the inherent availability, based on sample data, is available. In this paper, the uncertainties of small random samples are taken into account. The estimated mean times between failures, mean times to restore and the estimated inherent availability are treated as random variables. When the distributions of both times-between-failures and times-to-restore are exponential, the exact confidence limits on the inherent availability are derived. Based on reasonable assumptions, a nonparametric method of determining the approximate confidence limits on the inherent availability from data are proposed, without assuming any times-between-failures and times-to-restore distributions. Numerical examples are provided to demonstrate the validity of the proposed solution, which are compared with the results obtained from Monte Carlo simulations. It turns out that the proposed method yields satisfactory accuracy for engineering applications.
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