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Semi-intrusive uncertainty propagation for multiscale models

机译:多尺度模型的半侵入性不确定性繁殖

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A family of semi-intrusive forward uncertainty propagation (UP) methods for multiscale models is introduced. The methods are semi-intrusive in the sense that inspection of the model is limited up to the level of the single scale systems, and viewing these single scale components as black-boxes. The goal is to estimate uncertainty in the result of multiscale models at a reduced amount of time as compared to black-box Monte Carlo (MC).In the resulting semi-intrusive MC method, the required number of samples of an expensive single scale model is minimized in order to reduce the execution time for the overall uncertainty estimation. In the metamodeling approach the expensive model component is replaced completely by a computationally much cheaper surrogate model.These semi-intrusive algorithms have been tested on two case studies based on reaction-diffusion dynamics. The results demonstrate that the proposed semi-intrusive methods can reduce significantly the computational time for multiscale UP, while still computing accurately the estimates of uncertainties.The semi-intrusive methods can therefore be a valid alternative, when uncertainties of a multiscale model cannot be estimated by the black-box MC methods with a high precision in a feasible amount of time. (C) 2019 Elsevier B.V. All rights reserved.
机译:介绍了多尺度模型的半侵入式不确定性传播(UP)方法。这些方法是半侵入性的,即该模型的检查受到单级系统的级别,并将这些单个刻度组件视为黑匣子。目标是在与黑匣子蒙特卡罗(MC)相比的时间内估计多尺度模型的不确定性。在由此产生的半侵入式MC方法中,昂贵的单级模型所需的样本数量最小化以减少总不确定性估计的执行时间。在元模拟方法中,昂贵的模型组件被计算出的更便宜的代理模型完全替换。这些基于反应扩散动力学的两种情况研究已经测试了半侵入式算法。结果表明,所提出的半侵入式方法可以显着降低多脉质量的计算时间,同时仍然准确计算不确定性的估计数。因此,当无法估计多尺度模型的不确定性时,半侵入性方法可以是有效的替代方案通过黑盒MC方法,在可行的时间内具有高精度。 (c)2019 Elsevier B.v.保留所有权利。

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