稀疏样本高可靠性估计的对数三阶多项式正态变换方法

Q2 Engineering
Palaniappan Ramu, Harshal D. Kaushik
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引用次数: 1

摘要

正态变换经常用于可靠性分析。本文采用了一种三阶多项式正态变换(TPNT)方法。其基本思想是在施加单调性约束的同时,使用三阶多项式来近似probit空间中响应的累积分布函数(CDF)。目前的工作建议将对数变换应用于变换后的CDF的纵坐标,因此将该方法命名为log-TPNT。对数变换的数据有助于改进对分布尾部的拟合,从而更好地预测极值。Log-TPNT在一套涵盖所有类型尾部的统计分布和涵盖高维、非线性和系统可靠性方面的分析示例上进行了演示。结果表明,Log-TPNT可以预测高可靠性的响应值,样本数量少至9个。最后,使用bootstrap对与响应估计相关联的变化进行量化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A log-third order polynomial normal transformation approach for high-reliability estimation with scarce samples
Normal transformations are often used in reliability analysis. A Third order Polynomial Normal Transformation (TPNT) approach is used in this work. The underlying idea is to approximate the Cumulative Distribution Function (CDF) of the response in probit space using a third order polynomial while imposing monotonicity constraints. The current work proposes to apply log transformation to the ordinate of the transformed CDF and hence names the approach Log-TPNT. The log transformed data assists in improved fitting to the tails of the distribution resulting in better predictions of extreme values. Log-TPNT is demonstrated on a suite of statistical distributions covering all types of tails and analytical examples that cover aspects of high dimensions, non-linearity and system reliability. Results reveal that Log-TPNT can predict the response values corresponding to high reliability, with samples as scarce as 9. Finally, the variations associated with the response estimates are quantified using bootstrap.
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来源期刊
International Journal of Reliability and Safety
International Journal of Reliability and Safety Engineering-Safety, Risk, Reliability and Quality
CiteScore
1.00
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0.00%
发文量
1
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