首页> 外文期刊>International journal for uncertainty quantifications >FORWARD AND INVERSE UNCERTAINTY QUANTIFICATION USING MULTILEVEL MONTE CARLO ALGORITHMS FOR AN ELLIPTIC NONLOCAL EQUATION
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FORWARD AND INVERSE UNCERTAINTY QUANTIFICATION USING MULTILEVEL MONTE CARLO ALGORITHMS FOR AN ELLIPTIC NONLOCAL EQUATION

机译:椭圆非局部方程的多级蒙特卡罗算法正向和逆向不确定性量化

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摘要

This paper considers uncertainty quantification for an elliptic nonlocal equation. In particular, it is assumed that the parameters which define the kernel in the nonlocal operator are uncertain and a priori distributed according to a probability measure. It is shown that the induced probability measure on some quantities of interest arising from functionals of the solution to the equation with random inputs is well-defined,s as is the posterior distribution on parameters given observations. As the elliptic nonlocal equation cannot be solved approximate posteriors are constructed. The multilevel Monte Carlo (MLMC) and multilevel sequential Monte Carlo (MLSMC) sampling algorithms are used for a priori and a posteriori estimation, respectively, of quantities of interest. These algorithms reduce the amount of work to estimate posterior expectations, for a given level of error, relative to Monte Carlo and i.i.d. sampling from the posterior at a given level of approximation of the solution of the elliptic nonlocal equation.
机译:本文考虑了椭圆非局部方程的不确定性量化。特别地,假设在非局部算子中定义内核的参数是不确定的,并且根据概率测度而先验地分布。结果表明,由随机输入方程的解的泛函引起的一些感兴趣量的诱导概率度量是定义明确的,给定观测值对参数的后验分布也是如此。由于椭圆非局部方程无法求解,因此构造了近似后验。多级蒙特卡洛(MLMC)和多级顺序蒙特卡洛(MLSMC)采样算法分别用于感兴趣量的先验和后验估计。对于给定的误差水平,相对于蒙特卡洛和i.d.,这些算法减少了估计后验期望的工作量。在给定的椭圆非局部方程解近似水平下从后采样。

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