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Optimizing Latin hypercube design for sequential sampling of computer experiments

机译:优化拉丁文超立方体设计以进行计算机实验的顺序采样

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摘要

Space-filling and projective properties are desired features in the design of computer experiments to create global metamodels to replace expensive computer simulations in engineering design. The goal in this article is to develop an efficient and effective sequential Quasi-LHD (Latin Hypercube design) sampling method to maintain and balance the two aforementioned properties. The sequential sampling is formulated as an optimization problem, with the objective being the Maximin Distance, a space-filling criterion, and the constraints based on a set of pre-specified minimum one-dimensional distances to achieve the approximate one-dimensional projective property. Through comparative studies on sampling property and metamodel accuracy, the new approach is shown to outperform other sequential sampling methods for global metamodelling and is comparable to the one-stage sampling method while providing more flexibility in a sequential metamodelling procedure.
机译:空间填充和投射属性是计算机实验设计中需要的功能,以创建全局元模型来代替工程设计中昂贵的计算机模拟。本文的目的是开发一种有效且连续的准LHD(拉丁超立方体设计)采样方法,以维持和平衡上述两个属性。顺序采样被公式化为一个优化问题,其目标是最大距离,空间填充准则以及基于一组预定的最小一维距离的约束,以实现近似一维投影性质。通过对抽样属性和元模型准确性的比较研究,新方法在全局元建模方面表现优于其他顺序抽样方法,并且与一阶段抽样方法相当,同时在顺序元建模过程中提供了更大的灵活性。

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