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The promise and peril of uncertainty quantification using response surface approximations

机译:使用响应面近似的不确定性量化的前景和风险

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Conventional sampling-based uncertainty quantification (UQ) methods involve generating large numbers of random samples on input variables and calculating output statistics by evaluating the computational model for each set of samples. For real world applications, this method can be computationally prohibitive due to the cost of the model and the time required for each simulation run. Using response surface approximations may allow for the output statistics to be estimated more accurately when only a limited number of simulation runs are available. This paper describes an initial investigation into response surface based UQ using both kriging and multivariate adaptive regression spline surface approximation methods. In addition, the impact of two different data sampling methods, Latin hypercube sampling and orthogonal array sampling, is also examined. The data obtained from this study indicate that caution should be exercised when implementing response surface based methods for UQ using very low sample sizes. However, this study also shows that there are clear cases where response surface based UQ provides a gain in accuracy versus conventional sampling-based UQ methods.
机译:常规的基于采样的不确定性量化(UQ)方法涉及在输入变量上生成大量随机样本,并通过评估每组样本的计算模型来计算输出统计量。对于实际应用,由于模型的成本和每次模拟运行所需的时间,该方法在计算上可能会被禁止。当只有有限数量的模拟运行可用时,使用响应面近似可以使输出统计信息更准确地估计。本文介绍了使用克里金法和多元自适应回归样条曲面近似方法对基于响应面的UQ的初步研究。此外,还检查了拉丁超立方体采样和正交数组采样这两种不同的数据采样方法的影响。从这项研究中获得的数据表明,在使用非常小的样本量对UQ实施基于响应面的方法时,应谨慎行事。但是,这项研究还表明,在明显的情况下,与传统的基于采样的UQ方法相比,基于响应面的UQ可以提高准确性。

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