A Novel Hierarchical Framework for Uncertainty Analysis of Multiscale Systems Combined Vine Copula With Sparse PCE

Can Xu, Zhao Liu, Wei Tao, P. Zhu
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Abstract

Uncertainty analysis is an effective methodology to acquire the variability of composite material properties. However, it is hard to apply hierarchical multiscale uncertainty analysis to the complex composite materials due to both quantification and propagation difficulties. In this paper, a novel hierarchical framework combined R-vine copula with sparse polynomial chaos expansions is proposed to handle multiscale uncertainty analysis problems. According to the strength of correlations, two different strategies are proposed to complete the uncertainty quantification and propagation. If the variables are weakly correlated or mutually independent, Rosenblatt transformation is used directly to transform non-normal distributions into the standard normal distributions. If the variables are strongly correlated, multidimensional joint distribution is obtained by constructing R-vine copula, and Rosenblatt transformation is adopted to generalize independent standard variables. Then the sparse polynomial chaos expansion is used to acquire the uncertainties of outputs with relatively few samples. The statistical moments of those variables that act as the inputs of next upscaling model, can be gained analytically and easily by the polynomials. The analysis process of the proposed hierarchical framework is verified by the application of a 3D woven composite material system. Results show that the multidimensional correlations are modelled accurately by the R-vine copula functions, and thus uncertainty propagations with the transformed variables can be done to obtain the computational results with consideration of uncertainties accurately and efficiently.
结合Vine Copula和稀疏PCE的多尺度系统不确定性分析新层次框架
不确定度分析是获取复合材料性能变异性的有效方法。然而,层次多尺度不确定性分析由于量化和传播困难,难以应用于复杂复合材料。本文提出了一种将R-vine copula与稀疏多项式混沌展开相结合的分层框架来处理多尺度不确定性分析问题。根据相关性的强弱,提出了两种不同的策略来完成不确定性的量化和传播。如果变量弱相关或相互独立,则直接使用Rosenblatt变换将非正态分布转换为标准正态分布。如果变量是强相关的,则通过构造R-vine copula得到多维联合分布,并采用Rosenblatt变换对独立标准变量进行推广。然后利用稀疏多项式混沌展开法获取样本相对较少的输出的不确定性。作为下一个上尺度模型输入的这些变量的统计矩可以通过多项式解析而容易地获得。通过三维编织复合材料系统的应用验证了所提出的分层框架的分析过程。结果表明,用R-vine copula函数对多维关联进行了准确的建模,可以对变换后的变量进行不确定性传播,从而得到准确、高效的考虑不确定性的计算结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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