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Multiple Metamodels for Robustness Estimation in Multi-objective Robust Optimization

机译:多目标鲁棒优化中用于鲁棒性估计的多个元模型

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Due to the excessive cost of Monte Carlo simulation, metamodel is now frequently used to accelerate the process of robustness estimation. In this paper, we explore the use of multiple metamodels for robustness evaluation in multi-objective evolutionary robust optimization under parametric uncertainty. The concept is to build several different metamodel types, and employ cross-validation to pick the best metamodel or to create an ensemble of metamodels. Three types of metamodel were investigated: sparse polynomial chaos expansion (PCE), Kriging, and 2nd order polynomial regression (PR). Numerical study on robust optimization of two test problems was performed. The result shows that the ensemble approach works well when all the constituent metamodel is sufficiently accurate, while the best scheme is more favored when there is a constituent metamodel with poor quality. Moreover, besides the accuracy, we found that it is also important to preserve the trend and smoothness of the decision variables-robustness relationship. PR, which is the less accurate metamodel from all, can found a better representation of the Pareto front than the sparse PCE.
机译:由于蒙特卡洛模拟的成本过高,因此现在经常使用元模型来加快鲁棒性估计的过程。在本文中,我们探索在参数不确定性的多目标进化鲁棒优化中,使用多个元模型进行鲁棒性评估。概念是建立几种不同的元模型类型,并采用交叉验证来选择最佳元模型或创建一组元模型。研究了三种类型的元模型:稀疏多项式混沌展开(PCE),Kriging和二阶多项式回归(PR)。进行了两个测试问题的鲁棒优化的数值研究。结果表明,当所有组成元模型都足够准确时,集成方法效果很好,而当存在质量较差的组成元模型时,最佳方案更受青睐。此外,除了准确性外,我们发现保持决策变量与稳健性关系的趋势和平滑度也很重要。 PR是所有模型中精度较低的元模型,与稀疏的PCE相比,可以找到更好的帕累托前沿表示。

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