首页> 外文期刊>International journal for uncertainty quantifications >A MULTI-FIDELITY STOCHASTIC COLLOCATION METHOD FOR PARABOLIC PARTIAL DIFFERENTIAL EQUATIONS WITH RANDOM INPUT DATA
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A MULTI-FIDELITY STOCHASTIC COLLOCATION METHOD FOR PARABOLIC PARTIAL DIFFERENTIAL EQUATIONS WITH RANDOM INPUT DATA

机译:带有随机输入数据的抛物型偏微分方程的多保真随机匹配方法

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摘要

Over the last few years there have been dramatic advances in the area of uncertainty quantification. In particular, we have seen a surge of interest in developing efficient, scalable, stable, and convergent computational methods for solving differential equations with random inputs. Stochastic collocation (SC) methods, which inherit both the ease of implementation of sampling methods like Monte Carlo and the robustness of nonsampling ones like stochastic Galerkin to a great deal, have proved extremely useful in dealing with differential equations driven by random inputs. In this work we propose a novel enhancement to stochastic collocation methods using deterministic model reduction techniques. Linear parabolic partial differential equations with random forcing terms are analysed. The input data are assumed to be represented by a finite number of random variables. A rigorous convergence analysis, supported by numerical results, shows that the proposed technique is not only reliable and robust but also efficient.
机译:在过去的几年中,不确定性量化领域取得了巨大的进步。特别是,我们看到了开发有效,可伸缩,稳定和收敛的计算方法来求解带有随机输入的微分方程的兴趣。随机配置(SC)方法在很大程度上继承了蒙特卡洛(Monte Carlo)等采样方法的实现方式以及诸如随机Galerkin之类的非采样方法的鲁棒性,在处理由随机输入驱动的微分方程时,这种方法非常有用。在这项工作中,我们提出了一种使用确定性模型约简技术对随机配置方法的新颖增强。分析了带有随机强迫项的线性抛物型偏微分方程。假定输入数据由有限数量的随机变量表示。严格的收敛性分析,并得到数值结果的支持,表明所提出的技术不仅可靠,鲁棒,而且有效。

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