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A NON-NESTED INFILLING STRATEGY FOR MULTIFIDELITY BASED EFFICIENT GLOBAL OPTIMIZATION

机译:基于多尺寸的高效全局优化的非嵌套缺陷策略

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Efficient global optimization (EGO) has become a standard approach for the global optimization of complex systems with high computational costs. EGO uses a training set of objective function values computed at selected input points to construct a statistical surrogate model, with low evaluation cost, on which the optimization procedure is applied. The training set is sequentially enriched, selecting new points, according to a prescribed infilling strategy, in order to converge to the optimum of the original costly model. Multifidelity approaches combining evaluations of the quantity of interest at different fidelity levels have been recently introduced to reduce the computational cost of building a global surrogate model. However, the use of multifidelity approaches in the context of EGO is still a research topic. In this work, we propose a new effective infilling strategy for multifidelity EGO. Our infilling strategy has the particularity of relying on non-nested training sets, a characteristic that comes with several computational benefits. For the enrichment of the multifidelity training set, the strategy selects the next input point together with the fidelity level of the objective function evaluation. This characteristic is in contrast with previous nested approaches, which require estimation of all lower fidelity levels and are more demanding to update the surrogate. The resulting EGO procedure achieves a significantly reduced computational cost, avoiding computations at useless fidelity levels whenever possible, but it is also more robust to low correlations between levels and noisy estimations. Analytical problems are used to test and illustrate the efficiency of the method. It is finally applied to the optimization of a fully nonlinear fluid-structure interaction system to demonstrate its feasibility on real large-scale problems, with fidelity levels mixing physical approximations in the constitutive models and discretization refinements.
机译:高效的全局优化(EGO)已成为具有高计算成本高复杂系统的全球优化的标准方法。 EGO使用在所选输入点计算的训练目标函数值,以构造统计代理模型,具有低评估成本,在此应用优化过程。根据规定的缺陷策略,依次丰富,选择新点,以便汇聚到原始昂贵型号的最佳选择。最近介绍了多幂方法,最近介绍了不同保真度水平的兴趣数量的评估,以降低构建全球代理模型的计算成本。然而,在自我的背景下使用多思率方法仍然是一个研究主题。在这项工作中,我们提出了一种新的多尺度自我的有效缺陷策略。我们的缺陷战略具有依赖非嵌套培训集的特殊性,这是具有多种计算效益的特征。为了丰富多尺度训练集,策略选择下一个输入点以及客观函数评估的保真水平。这种特性与先前的嵌套方法相反,需要估计所有较低的保真度水平,并且更苛刻更新代理。由此产生的EGO程序实现了显着降低的计算成本,尽可能避免无用的富力级别的计算,但在水平与噪声之间的低相关性也是更强大的。分析问题用于测试和说明方法的效率。最终应用于完全非线性流体结构相互作用系统的优化,以证明其对实际大规模问题的可行性,富达水平在本构模型中混合物理近似和离散化改进。

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