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MULTISTEP INPUT REDUCTION FOR HIGH DIMENSIONAL UNCERTAINTY QUANTIFICATION IN RAVEN CODE

机译:乌鸦代码中的高维不确定性量化的多步骤输入

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This manuscript focuses on the efficient construction of surrogates that can be employed in place of complex systems. The surrogates under consideration are fast to evaluate and yet accurate, which take the form of generalized polynomials chaos. Here, we utilize the principal component analysis (PCA) to reduce the number of input parameters, and we employ adaptive stochastic collocation (ASC) method to reduce the number of functions evaluations. Under the PCA and ASC methods, we propose a method that allow us to construct a surrogate that can effectively handle large number of input parameters and even more when adaptive high-dimensional model reduction (AHDMR) algorithm are employed to further reduce the dimensionality of input space. In the past year, this approach has been developed and implemented in RAVEN.
机译:该手稿专注于可用于代替复杂系统的代理的有效建筑。正在考虑的代理人迅速评估和准确,这采取了广义多项式混乱的形式。在这里,我们利用主成分分析(PCA)来减少输入参数的数量,并且我们采用自适应随机搭配(ASC)方法来减少函数评估的数量。在PCA和ASC方法下,我们提出了一种方法,该方法允许我们构建可以有效处理大量输入参数的代理,并且当采用自适应高维模型减少(AHDMR)算法以进一步降低输入的维度空间。在过去的一年中,这种方法已经在乌鸦制定和实施。

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