不利条件下的试验统计

IF 0.5 Q4 ENGINEERING, MECHANICAL
L. Pease, K. Anderson, J. Bamberger, M. Minette
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引用次数: 0

摘要

在这里,我们为有限的不良反应测试建立了一个统计基础。这种类型的测试同时根据最低要求评估系统性能,并将成本降至最低,尤其是对于大型工程项目。由于测试往往成本高昂且范围狭窄,因此获得的数据相对有限——这与最近的大数据运动正好相反,但同样引人注目。尽管这是工业和大型政府项目的一种非常常见的方法,但不良检测的统计基础仍然没有得到很好的探索。在这里,我们从数学上证明,在特定条件下,将每个自变量设置为不利条件会导致因变量出现类似程度的逆境。例如,将所有正态分布的自变量设置为至少其第95个百分位数会导致第95个百分点的结果。该分析考虑了样本量估计,以澄清这类测试中重复的值,确定有多少自变量必须设置为不利条件值,并强调了基本假设,以便工程师、统计学家、,主题专家知道何时可以成功应用该统计框架,并设计测试以满足统计要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistics for Testing Under Adverse Conditions
Here, we develop a statistical basis for limited adverse testing. This type of testing simultaneously evaluates system performance against minimum requirements and minimizes costs, particularly for large-scale engineering projects. Because testing is often expensive and narrow in scope, the data obtained are relatively limited—precisely the opposite of the recent big data movement but no less compelling. Although a remarkably common approach for industrial and large-scale government projects, a statistical basis for adverse testing remains poorly explored. Here, we prove mathematically, under specific conditions, that setting each independent variable to an adverse condition leads to a similar level of adversity in the dependent variable. For example, setting all normally distributed independent variables to at least their 95th percentile values leads to a result at the 95th percentile. The analysis considers sample size estimates to clarify the value of replicates in this type of testing, determines how many of the independent variables must be set to adverse condition values, and highlights the essential assumptions, so that engineers, statisticians, and subject matter experts know when this statistical framework may be applied successfully and design testing to satisfy statistical requisites.
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来源期刊
CiteScore
1.60
自引率
16.70%
发文量
12
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