An adaptive strategy for sequential designs of multilevel computer experiments

IF 1.5 4区 工程技术 Q2 ENGINEERING, MULTIDISCIPLINARY International Journal for Uncertainty Quantification Pub Date : 2021-04-05 DOI:10.1615/int.j.uncertaintyquantification.2023038376
Ayao Ehara, S. Guillas
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引用次数: 7

Abstract

Investigating uncertainties in computer simulations can be prohibitive in terms of computational costs, since the simulator needs to be run over a large number of input values. Building an emulator, i.e. a statistical surrogate model of the simulator constructed using a design of experiments made of a comparatively small number of evaluations of the forward solver, greatly alleviates the computational burden to carry out such investigations. Nevertheless, this can still be above the computational budget for many studies. Two major approaches have been used to reduce the budget needed to build the emulator: efficient design of experiments, such as sequential designs, and combining training data of different degrees of sophistication in a so-called multi-fidelity method, or multilevel in case these fidelities are ordered typically for increasing resolutions. We present here a novel method that combines both approaches, the multilevel adaptive sequential design of computer experiments (MLASCE) in the framework of Gaussian process (GP) emulators. We make use of reproducing kernel Hilbert spaces as a tool for our GP approximations of the differences between two consecutive levels. This dual strategy allows us to allocate efficiently limited computational resources over simulations of different levels of fidelity and build the GP emulator. The allocation of computational resources is shown to be the solution of a simple optimization problem in a special case where we theoretically prove the validity of our approach. Our proposed method is compared with other existing models of multi-fidelity Gaussian process emulation. Gains in orders of magnitudes in accuracy or computing budgets are demonstrated in some of numerical examples for some settings.
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多级计算机实验序列设计的自适应策略
考虑到计算成本,研究计算机模拟中的不确定性可能令人望而却步,因为模拟器需要在大量输入值上运行。建立仿真器,即使用由相对较少数量的正演求解器评估组成的实验设计来构建仿真器的统计代理模型,大大减轻了进行此类研究的计算负担。然而,这仍然超出了许多研究的计算预算。两种主要的方法被用来减少构建模拟器所需的预算:有效的实验设计,如顺序设计,以及在所谓的多保真度方法中组合不同复杂程度的训练数据,或者在这些保真度通常是为了增加分辨率而排序的情况下的多级别。本文提出了一种结合这两种方法的新方法,即高斯过程仿真器框架下的计算机实验多级自适应顺序设计(MLASCE)。我们利用再现核希尔伯特空间作为我们的GP逼近两个连续水平之间的差异的工具。这种双重策略允许我们在不同保真度的模拟上有效地分配有限的计算资源,并构建GP模拟器。在一个特殊情况下,计算资源的分配是一个简单的优化问题的解,我们从理论上证明了我们的方法的有效性。将该方法与现有的多保真高斯过程仿真模型进行了比较。在某些设置的一些数值示例中,精度或计算预算的数量级增益得到了证明。
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来源期刊
International Journal for Uncertainty Quantification
International Journal for Uncertainty Quantification ENGINEERING, MULTIDISCIPLINARY-MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
CiteScore
3.60
自引率
5.90%
发文量
28
期刊介绍: The International Journal for Uncertainty Quantification disseminates information of permanent interest in the areas of analysis, modeling, design and control of complex systems in the presence of uncertainty. The journal seeks to emphasize methods that cross stochastic analysis, statistical modeling and scientific computing. Systems of interest are governed by differential equations possibly with multiscale features. Topics of particular interest include representation of uncertainty, propagation of uncertainty across scales, resolving the curse of dimensionality, long-time integration for stochastic PDEs, data-driven approaches for constructing stochastic models, validation, verification and uncertainty quantification for predictive computational science, and visualization of uncertainty in high-dimensional spaces. Bayesian computation and machine learning techniques are also of interest for example in the context of stochastic multiscale systems, for model selection/classification, and decision making. Reports addressing the dynamic coupling of modern experiments and modeling approaches towards predictive science are particularly encouraged. Applications of uncertainty quantification in all areas of physical and biological sciences are appropriate.
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