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Adaptive use of replicated Latin Hypercube Designs for computing Sobol' sensitivity indices

机译:自适应使用复制的拉丁超立体设计用于计算Sobol'敏感性指数

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As recently pointed out in the field of Global Sensitivity Analysis (GSA) of computer simulations, the use of replicated Latin Hypercube Designs (rLHDs) is a cost-saving alternative to regular Monte Carlo sampling to estimate first-order Sobol' indices. Indeed, two rLHDs are sufficient to compute the whole set of those indices regardless of the number of input variables. This relies on a permutation trick which, however, only works within the class of estimators called Oracle 2. In the present paper, we show that rLHDs are still beneficial to another class of estimators, called Oracle 1, which often outperforms Oracle 2 for estimating small and moderate indices. Even though unlike Oracle 2 the computation cost of Oracle 1 depends on the input dimension, the permutation trick can be applied to construct an averaged (triple) Oracle 1 estimator whose great accuracy is presented on a numerical example.Thus, we promote an adaptive rLHDs-based Sobol' sensitivity analysis where the first stage is to compute the whole set of first-order indices by Oracle 2. If needed, the accuracy of small and moderate indices can then be reevaluated by the averaged Oracle 1 estimators. This strategy, cost-saving and guaranteeing the accuracy of estimates, is applied to a computer model from the nuclear field.
机译:据指出,在计算机模拟的全局敏感性分析(GSA)领域,使用复制的拉丁杂交设计(RLHDS)是常规蒙特卡罗采样来估算一阶Sobol'索引的成本节省替代品。实际上,无论输入变量的数量如何,两个RLHD就足以计算整组指数。这依赖于置换诀窍,但是,只有在称为Oracle 2的估计量内工作的排列诀窍。在本文中,我们表明RLHDS仍然有利于另一类称为Oracle 1的估计器,这通常优于Oracle 2来估计小和中等指数。尽管与Oracle 2不同,但是Oracle 1的计算成本取决于输入维度,可以应用置换技巧来构造平均(三重)Oracle 1估计器,其在数字示例中呈现了很大的准确性.Thus,我们推广了一个自适应RLHD基于Sobol'敏感性分析,第一阶段是通过Oracle 2计算整组一级指数2.如果需要,则可以通过平均的Oracle 1估计器重新评估小和中等指数的精度。这种策略,节省成本和保证估算准确性,应用于来自核领域的计算机模型。

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