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首页> 外文期刊>SIAM/ASA Journal on Uncertainty Quantification >Multilevel Monte Carlo Covariance Estimation for the Computation of Sobol' Indices
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Multilevel Monte Carlo Covariance Estimation for the Computation of Sobol' Indices

机译:多级蒙特卡罗协方差估计Sobol指数的计算

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摘要

Crude and quasi Monte Carlo (MC) sampling techniques are common tools dedicated to estimating statistics (expectation, variance, covariance) of a random quantity of interest. We focus here on the uncertainty quantification framework where the quantity of interest is the output of a numerical simulator fed with uncertain input parameters. Then, sampling the output involves running the simulator for different samples of the inputs, which may be computationally time-consuming. To reduce the cost of sampling, a first approach consists in replacing the numerical simulator by a surrogate model that is cheaper to evaluate, thus making it possible to generate more samples of the output and therefore leading to a lower sampling error. However, this approach adds to the sampling error an unavoidable model error. Another approach, which does not introduce any model error, is the so-called multilevel MC (MLMC) method. Given a sequence of levels corresponding to numerical simulators with increasing accuracy and computational cost, MLMC combines samples obtained at different levels to construct an estimator at a reduced cost compared to standard MC sampling. In this paper, we derive and analyze multilevel covariance estimators and adapt the MLMC convergence theorem in terms of the corresponding covariances and fourth order moments. We propose a multilevel algorithm driven by a target cost as an alternative to typical algorithms driven by a target accuracy. These results are used in a sensitivity analysis context in order to derive a multilevel estimation of Sobol' indices, whose building blocks can be written as covariance terms in a pick-and-freeze formulation. These contributions are successfully tested on an initial value problem with random parameters.
机译:原油和拟蒙特卡罗(MC)抽样致力于技术是常见的工具估计统计(期望,方差,协方差)感兴趣的一个随机量。集中在不确定性量化感兴趣的是框架的数量美联储与数值模拟器的输出不确定输入参数。输出包括运行模拟器不同的输入样本,这可能是计算耗时。第一种方法在于抽样成本代理代替数值模拟器便宜的评价模型,从而使它可能产生更多的样本输出因此导致更低的抽样误差。然而,这种方法增加了抽样误差不可避免的误差模型。不引入任何模型错误,是吗所谓的多级MC (MLMC)方法。水平相应的数值序列模拟器与准确性和增加计算成本,MLMC结合样本获得各级构造一个估计比标准以降低成本MC抽样。多级协方差估计和调整MLMC收敛定理的相应的协方差和四阶的时刻。通过目标成本作为典型的替代品算法由一个目标精度。结果是用于敏感性分析为了获得一个多级上下文估计Sobol的指数,其建筑在一块可以写成协方差术语pick-and-freeze配方。在成功测试了一个初始值随机参数的问题。

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