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首页> 外文期刊>SIAM/ASA Journal on Uncertainty Quantification >Multifidelity Monte Carlo Estimation with Adaptive Low-Fidelity Models
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Multifidelity Monte Carlo Estimation with Adaptive Low-Fidelity Models

机译:Multifidelity蒙特卡罗估计自适应低保真模型

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摘要

Multifidelity Monte Carlo (MFMC) estimation combines low- and high-fidelity models to speed up the estimation of statistics of the high-fidelity model outputs. MFMC optimally samples the low-and high-fidelity models such that the MFMC estimator has minimal mean-squared error (MSE) for a given computational budget. In the setup of MFMC, the low-fidelity models are static; i.e., they are given and fixed and cannot be changed and adapted. We introduce the adaptive MFMC (AMFMC) method that splits the computational budget between adapting the low-fidelity models to improve their approximation quality and sampling the low- and high-fidelity models to reduce the MSE of the estimator. Our AMFMC approach derives the quasi-optimal balance between adaptation and sampling in the sense that our approach minimizes an upper bound of the MSE, instead of the error directly. We show that the quasi-optimal number of adaptations of the low-fidelity models is bounded even in the limit of an infinite budget. This shows that adapting low-fidelity models in MFMC beyond a certain approximation accuracy is unnecessary and can even be wasteful. Our AMFMC approach trades off adaptation and sampling and so avoids overadaptation of the low-fidelity models. Besides the costs of adapting low-fidelity models, our AMFMC approach can also take into account the costs of the initial construction of the low-fidelity models ("offline costs"), which is critical if low-fidelity models are computationally expensive to build such as reduced models and data-fit surrogate models. Numerical results demonstrate that our adaptive approach can achieve orders of magnitude speedups compared to MFMC estimators with static low-fidelity models and compared to Monte Carlo estimators that use the high-fidelity model alone.
机译:Multifidelity蒙特卡罗(MFMC)估计结合了低收入和高保真模型速度估计的统计数据高保真模型输出。样品的低收入和高保真模型等MFMC估计量的均方最小误差(MSE)对于一个给定的计算预算。的设置MFMC,低保真模型静态的;被改变和适应。MFMC分裂计算(AMFMC)方法预算调整低保真模型之间质量和改善他们的近似值抽样的低收入和高保真模型减少估计量的均方误差。方法得出最优的平衡适应和抽样之间的感觉我们的方法最小化均方误差的上界,而不是直接错误。最优的适应性即使在极限低保真模型是有界的无限的预算。低保真模型MFMC超过一定近似精度是不必要的,可以甚至是浪费。适应和采样,因此避免了overadaptation的低保真模型。除了适应低保真的成本模型,我们AMFMC方式也可以考虑账户的初始建设成本低保真模型(“线下成本”)如果低保真模型是至关重要的计算昂贵的建设等减少模型和data-fit代理模型。数值结果表明,我们的适应性方法可以达到数量级的加速效果相比与静态MFMC估计低保真模型和蒙特卡罗相比使用高保真模型的估计一个人。

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