An enhanced two-quantile Wilks methodology for engineering uncertainty analysis |
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Authors: | Johan René van Dorp Ekundayo Shittu Cristian Rabiti |
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Affiliation: | 1. Engineering Management and Systems Engineering Department, The George Washington University, Washington, District of Columbia, USA;2. Ultra Safe Nuclear Corporation, Idaho, USA |
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Abstract: | Complex computational engineering uncertainty analyses have become more prevalent. When input parameters of such engineering models are uncertain, the output metric's uncertainty distribution is of an unknown parametric form. Since Wilks' method, named after the seminal paper by SS Wilks in 1941 entitled “Determination of sample sizes for setting tolerance limits”, is a nonparametric statistical procedure, it has received renewed interest, in particular in nuclear and chemical safety engineering. Unfortunately, the prevailing Wilks' method applied relies on arbitrary specification of order statistics' ranks with undue influence on the sample size recommendations that follow. Herein, a novel modification of Wilks' method involving two quantiles is proposed resolving that arbitrary rank selection. Together with a confidence level to be exceeded, these quantiles uniquely determine the parameters of an order statistics' beta distribution which drive the selection of symmetric tolerance limits. The modified procedure is demonstrated in two illustrative engineering uncertainty analysis examples drawn from the nuclear and chemical engineering domains. |
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Keywords: | safety engineering nonparametric statistics order statistics sample size selection |
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