随机有限元分析中的拉丁超立方抽样

A. Olsson, G. Sandberg
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引用次数: 190

摘要

在随机有限元分析中,提出了一种拉丁超立方体采样方法,该方法减少了输入数据中的伪相关。与标准的蒙特卡罗抽样相比,这种抽样程序有力地改善了随机设计参数的表示。由于相关控制要求实现数大于问题中随机变量的数量,因此采用主成分分析来减少随机变量的数量。在许多情况下,这大大放宽了对实现数量的限制。该方法具有与标准蒙特卡罗采样方法相同的普遍适用性,但在计算效率上具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Latin Hypercube Sampling for Stochastic Finite Element Analysis
A Latin hypercube sampling method, including a reduction of spurious correlation in input data, is suggested for stochastic finite element analysis. This sampling procedure strongly improves the representation of stochastic design parameters compared to a standard Monte Carlo sampling. As the correlation control requires the number of realizations to be larger than the number of stochastic variables in the problem, a principal component analysis is employed to reduce the number of stochastic variables. In many cases, this considerably relaxes the restriction on the number of realizations. The method presented offers the same general applicability as the standard Monte Carlo sampling method but is superior in computational efficiency.
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