Polynomial-Chaos-based克里格

R. Schöbi, B. Sudret, J. Wiart
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引用次数: 230

摘要

计算机仿真已成为许多工程领域设计和优化系统以及评估其可靠性的标准工具。为了应对诸如优化和可靠性等苛刻的分析,代理模型(又称元模型)在过去十年中得到了越来越多的研究。多项式混沌展开(PCE)和克里格(Kriging)是两种流行的非侵入式元建模技术。PCE用输入变量中的一系列标准正交多项式代替计算模型,其中多项式的选择与这些输入变量的概率分布一致。另一方面,Kriging假设计算机模型表现为高斯随机过程的实现,其参数是从可用的计算机运行中估计出来的,即输入向量和响应值。到目前为止,这两种技术或多或少是并行发展的,两个领域的研究人员之间很少有互动。PC-Kriging是一种结合PCE和Kriging的非侵入式元建模方法。标准正交多项式(PCE)的稀疏集近似计算模型的全局行为,而Kriging管理模型输出的局部可变性。一种类似最小角度回归算法的自适应算法确定多项式的最优稀疏集。PC-Kriging在各种基准分析函数上进行了验证,这些函数易于采样以获得参考结果。从数值研究中可以得出结论,PC-Kriging的表现优于或至少与这两种不同的元建模技术一样好。当实验设计具有有限的尺寸时,可以获得更大的精度增益,这在处理要求苛刻的计算模型时是一种资产。
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Polynomial-Chaos-based Kriging
Computer simulation has become the standard tool in many engineering fields for designing and optimizing systems, as well as for assessing their reliability. To cope with demanding analysis such as optimization and reliability, surrogate models (a.k.a meta-models) have been increasingly investigated in the last decade. Polynomial Chaos Expansions (PCE) and Kriging are two popular non-intrusive meta-modelling techniques. PCE surrogates the computational model with a series of orthonormal polynomials in the input variables where polynomials are chosen in coherency with the probability distributions of those input variables. On the other hand, Kriging assumes that the computer model behaves as a realization of a Gaussian random process whose parameters are estimated from the available computer runs, i.e. input vectors and response values. These two techniques have been developed more or less in parallel so far with little interaction between the researchers in the two fields. In this paper, PC-Kriging is derived as a new non-intrusive meta-modeling approach combining PCE and Kriging. A sparse set of orthonormal polynomials (PCE) approximates the global behavior of the computational model whereas Kriging manages the local variability of the model output. An adaptive algorithm similar to the least angle regression algorithm determines the optimal sparse set of polynomials. PC-Kriging is validated on various benchmark analytical functions which are easy to sample for reference results. From the numerical investigations it is concluded that PC-Kriging performs better than or at least as good as the two distinct meta-modeling techniques. A larger gain in accuracy is obtained when the experimental design has a limited size, which is an asset when dealing with demanding computational models.
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