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Evaluation of multifidelity surrogate modeling techniques to construct closure laws for drag in shock-particle interactions

机译:评估多蛋白代理建模技术,构建休克粒子相互作用拖曳的闭合法

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Meta- (or surrogate-) models constructed from meso-scale simulations can be used in place of empirical correlations to close macro-scale equations. In shocked particulate flows, surrogate models for drag are constructed as functions of shock Mach number (Ma), particle volume fraction (phi), Reynolds number (Re), etc. The computational cost of the high-fidelity meso-scale simulations is a challenge in construction of surrogates in such hierarchical multi-scale frameworks. Here multifidelity surrogate-modeling techniques are evaluated as inexpensive alternatives to high-fidelity surrogate models for obtaining closure laws for drag in shock-particle interactions. Preliminary surrogates for drag as a function of Ma and phi are constructed from ensembles of low-fidelity (coarse grid) mesoscale computations. The low-fidelity surrogates are subsequently corrected using only a few (N-hf) high-fidelity computations to obtain multifidelity surrogate models. The paper evaluates three different methods for correcting an initial low-fidelity surrogate; Space Mapping (SM), Radial Basis Functions (RBF) and Modified Bayesian Kriging (MBKG). Of these methods, MBKG is found to provide the best multi-fidelity surrogate model, simultaneously minimizing the computational cost and error in the constructed surrogate. (C) 2018 Elsevier Inc. All rights reserved.
机译:可以使用由Meso-Scale模拟构成的META(或代理)模型来代替宏观尺度方程的经验相关性。在震动的微粒流动中,用于阻力的替代模型被构造为冲击马赫数(mA)的功能,粒子体积分数(PHI),雷诺数(RE)等。高保真中间级模拟的计算成本是a等分层多规模框架中代理人建设的挑战。这里,多替赖特代理 - 建模技术被评估为高保真代理模型的廉价替代品,以获得闭合法律以拖动冲击粒子相互作用。作为MA和PHI函数的初步替代品由低保真(粗网格)Mescle计算的集合构成。随后使用几(n-hf)高保真计算来校正低保真代理,以获得多尺代理模型。本文评估了三种不同的方法来校正初始低保真替代物;空间映射(SM),径向基函数(RBF)和改进的贝叶斯克里格(MBKG)。在这些方法中,发现MBKG提供了最佳的多保真代理模型,同时最小化构造代理的计算成本和错误。 (c)2018年Elsevier Inc.保留所有权利。

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