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Multifidelity Monte Carlo estimation for large-scale uncertainty propagation*

机译:大规模不确定性传播的多尺度蒙特卡罗估计*

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One important task of uncertainty quantification is propagating input uncertainties through a system of interest to quantify the uncertainties' effects on the system outputs; however, numerical methods for uncertainty propagation are often based on Monte Carlo estimation, which can require large numbers of numerical simulations of the numerical model describing the system response to obtain estimates with acceptable accuracies. Thus, if the model is computationally expensive to evaluate, then Monte-Carlo-based uncertainty propagation methods can quickly become computationally intractable. We demonstrate that multifidelity methods can significantly speedup uncertainty propagation by leveraging low-cost low-fidelity models and establish accuracy guarantees by using occasional recourse to the expensive high-fidelity model. We focus on the multifidelity Monte Carlo method, which is a multifidelity approach that optimally distributes work among the models such that the mean-squared error of the multifidelity estimator is minimized for a given computational budget. The multifidelity Monte Carlo method is applicable to general types of low-fidelity models, including projection-based reduced models, data-fit surrogates, response surfaces, and simplified-physics models. We apply the multifidelity Monte Carlo method to a coupled aero-structural analysis of a wing and a flutter problem with a high-aspect-ratio wing. The low-fidelity models are data-fit surrogate models derived with standard procedures that are built in common software environments such as Matlab and numpy/scipy. Our results demonstrate speedups of orders of magnitude compared to using the high-fidelity model alone.
机译:不确定性量化的一个重要任务是通过感兴趣的系统传播输入的不确定性,以量化不确定性对系统输出的影响;然而,用于不确定传播的数值方法通常基于蒙特卡罗估计,这可能需要描述系统响应的数值模拟的大量数值模拟,以获得具有可接受的精度的估计。因此,如果该模型用于评估昂贵的昂贵,则基于Monte-Carlo的不确定性传播方法可以快速变为计算难以处理。我们证明,通过利用低成本低保真模型,多尺寸方法可以通过利用低成本的低保真模型来显着加速不确定性传播,并通过使用偶尔诉诸昂贵的高保真模型来建立精度保证。我们专注于多义蒙特卡罗方法,这是一种多尺寸方法,可以最佳地分布在模型中的工作,使得对于给定的计算预算最小化多尺寸估计器的平均平方误差。 Multifivelity Monte Carlo方法适用于一般类型的低保真模型,包括基于投影的减少模型,数据拟合代理,响应表面和简化物理模型。我们将多尺寸蒙特卡罗方法应用于机翼的耦合空气结构分析和高纵横比翼的颤动问题。低保真模型是衍生的数据适合替代模型,其标准程序是内置于常见软件环境,如MATLAB和NUMPY / SCIPY。我们的结果表明,与使用高保真模型单独使用高保真模型相比,幅度的加速。

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