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A hybrid polynomial dimensional decomposition for uncertainty quantification of high-dimensional complex systems

机译:用于高维复杂系统不确定性量化的混合多项式维分解

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This paper presents a novel hybrid polynomial dimensional decomposition (PDD) method for stochastic computing in high-dimensional complex systems. When a stochastic response does not possess a strongly additive or a strongly multiplicative structure alone, then the existing additive and multiplicative PDD methods may not provide a sufficiently accurate probabilistic solution of such a system. To circumvent this problem, a new hybrid PDD method was developed that is based on a linear combination of an additive and a multiplicative PDD approximation, a broad range of orthonormal polynomial bases for Fourier-polynomial expansions of component functions, and a dimension-reduction or sampling technique for estimating the expansion coefficients. Two numerical problems involving mathematical functions or uncertain dynamic systems were solved to study how and when a hybrid PDD is more accurate and efficient than the additive or the multiplicative PDD. The results show that the univariate hybrid PDD method is slightly more expensive than the univariate additive or multiplicative PDD approximations, but it yields significantly more accurate stochastic solutions than the latter two methods. Therefore, the univariate truncation of the hybrid PDD is ideally suited to solving stochastic problems that may otherwise mandate expensive bivariate or higher-variate additive or multiplicative PDD approximations. Finally, a coupled acoustic-structural analysis of a pickup truck subjected to 46 random variables was performed, demonstrating the ability of the new method to solve large-scale engineering problems. (C) 2014 Elsevier Ltd. All rights reserved.
机译:本文提出了一种新的混合多项式维分解(PDD)方法,用于高维复杂系统中的随机计算。当随机响应单独不具有强加性或强乘性结构时,则现有的加性和乘性PDD方法可能无法提供这种系统的足够准确的概率解。为了解决这个问题,开发了一种新的混合PDD方法,该方法基于加法和乘法PDD逼近的线性组合,范围广泛的用于分量函数的Fourier多项式展开的正交多项式基以及降维或用于估计膨胀系数的采样技术。解决了涉及数学函数或不确定动力系统的两个数值问题,以研究混合PDD如何以及何时比加性或乘性PDD更准确和有效。结果表明,单变量混合PDD方法比单变量加法或乘法PDD逼近方法稍贵,但它产生的随机解比后两种方法精确得多。因此,混合PDD的单变量截断理想地适合于解决随机问题,否则这些随机问题可能需要昂贵的双变量或更高变量的加法或乘法PDD近似。最后,对一辆皮卡车进行了46个随机变量的耦合声结构分析,证明了该新方法能够解决大规模工程问题。 (C)2014 Elsevier Ltd.保留所有权利。

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