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Optimal design of computer experiments for surrogate models with dimensionless variables

机译:替代模型与无量纲变量的计算机实验最优设计

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This paper presents a method for constructing optimal design of experiments (DoE) intended for building surrogate models using dimensionless (or non-dimensional) variables. In order to increase the fidelity of the model obtained by regression, the DoE needs to optimally cover the dimensionless space. However, in order to generate the data for the regression, one still needs a DoE for the physical variables, in order to carry out the simulations. Thus, there exist two spaces, each one needing a DoE. Since the dimensionless space is always smaller than the physical one, the challenge for building a DoE is that the relation between the two spaces is not bijective. Moreover, each space usually has its own domain constraints, which renders them not-surjective. This means that it is impossible to design the DoE in one space and then automatically generate the corresponding DoE in the other space while satisfying the constraints from both spaces. The solution proposed in the paper transforms the computation of the DoE into an optimization problem formulated in terms of a space-filling criterion (maximizing the minimum distance between neighboring points). An approach is proposed for efficiently solving this optimization problem in a two steps procedure. The method is particularly well suited for building surrogates in terms of dimensionless variables spanning several orders of magnitude (e.g. power laws). The paper also proposes some variations of the method; one when more control is needed on the number of levels on each non-dimensional variable and another one when a good distribution of the DoE is desired in the logarithmic scale. The DoE construction method is illustrated on three case studies. A purely numerical case illustrates each step of the method and two other, mechanical and thermal, case studies illustrate the results in different configurations and different practical aspects.
机译:本文介绍了用于构建用于使用无量纲(或非维数)变量建立代理模型的实验(DOE)的最佳设计的方法。为了提高通过回归获得的模型的保真度,DOE需要最佳地覆盖无量纲空间。但是,为了生成回归的数据,仍然需要用于物理变量的DOE,以便执行模拟。因此,存在两个空间,每个空间需要一个母鹿。由于无量纲空间总是小于物理的空间,因此构建母鹿的挑战是两个空间之间的关系不是基于基础的。此外,每个空间通常都有自己的域约束,这使它们呈现出不全来的。这意味着在一个空间中不可能在一个空间中设计DOE,然后在满足两个空间的约束时自动生成相应的DOE。本文提出的解决方案将DOE的计算转化为在空间填充标准方面配制的优化问题(最大化相邻点之间的最小距离)。提出了一种方法,用于在两个步骤过程中有效地解决该优化问题。该方法特别适用于在跨越几个数量级(例如电力法)的无量纲变量方面建立代理。本文还提出了该方法的一些变化;当在对数刻度中需要良好的DOE分布时,在每个非尺寸变量上的水平数量上需要更多控制时。在三种案例研究中说明了DOE施工方法。纯粹的数值壳体示出了该方法的每个步骤和另外两个,机械和热,案例研究说明了不同配置和不同实际方面的结果。

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