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Dynamic Adaptive Sampling Based on Kriging Surrogate Models for Efficient Uncertainty Quantification

机译:基于Kriging代理模型的动态自适应采样,以获得高效不确定性量化

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New Kriging-surrogate-model-based dynamic adaptive sampling methods are proposed for an accurate and efficient uncertainty quantification (UQ). The criteria for the proposed dynamic adaptive sampling are based on the combination of both the uncertainty and the gradient information of the Kriging predictors. The polynomial errors (related to Runge's phenomenon) appeared near the endpoints in the stochastic space are reduced by adding an extra error-estimate term (based on the difference of the Kriging predictors with different correlation functions) in the adaptive sampling criteria. The proposed Kriging-based dynamic adaptive sampling methods are tested on one-dimensional and two-dimensional analytic functions with smooth and non-smooth response surfaces. The method shows a superior performance to estimate the statistics of output solution in terms of efficiency, accuracy, and robustness regardless of the choice of initial samples and the smoothness and dimensionality of stochastic space compared to the existing criterion based on only the Kriging predictor uncertainty.
机译:基于新的Kriging-替代模型的动态自适应采样方法,提出了准确,有效的不确定度量(UQ)。所提出的动态自适应采样的标准基于克里格预测器的不确定性和梯度信息的组合。通过在自适应采样标准中添加额外的误差估计项(基于具有不同相关函数的Kriging预测器的差异),减少了随机空间中的端点附近出现了多项式误差(与横向的现象)。基于Kriging的动态自适应采样方法在具有平滑和非平滑响应表面的一维和二维分析功能上进行测试。该方法显示出卓越的性能,以估算效率,准确性和鲁棒性的输出解决方案的统计数据,而不管仅基于Kriging预测器不确定性与现有标准相比,随机空间的光滑度和程度的光滑度和维度。

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