A fast optimal latin hypercube design for Gaussian process regression modeling

X. Liao, X. Yan, W. Xia, Bin Luo
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引用次数: 12

Abstract

In engineering applications, Gaussian process (GP) regression method is a new statistical optimization approach, to which more and more attention is paid. It does not need pre-assuming a specified model and just requires a small amount of initial training samples. Based on the design of experiment (DOE), determining a reasonable statistical sample space is an important part for training the GP surrogate model. In this paper, a novel intelligent method of DOE, the translational propagation algorithm, is employed to obtain optimal Latin hypercube designs (TPLHDs). It also proved that TPLHDs' performance is superior to other LHDs' optimization techniques in low to medium dimensions. Using this method, the best settings of the process parameters are determined to train GP surrogate model in the injection process. A automobile door handle is taken as an example, and experimental results show that the proposed TPLHD performs much better than the normal LHD in the quality of fitting GP surrogate model, so taking TPLHDs instead of LHDs' optimization technique for training GP model is practical and promising.
高斯过程回归建模的快速最优拉丁超立方体设计
在工程应用中,高斯过程回归方法是一种新的统计优化方法,越来越受到人们的重视。它不需要预先假设一个特定的模型,只需要少量的初始训练样本。基于实验设计(DOE),确定合理的统计样本空间是GP代理模型训练的重要环节。本文提出了一种新的DOE智能方法——平移传播算法,用于求解最优拉丁超立方体设计(tplhd)。同时也证明了tplhd在中低维度的性能优于其他lcd优化技术。利用该方法,确定最佳工艺参数的设置,训练注射过程中的GP代理模型。以某汽车门把手为例,实验结果表明,本文提出的TPLHD方法在GP代理模型拟合质量上明显优于普通LHD方法,因此采用TPLHD方法代替LHD方法的优化技术来训练GP模型是一种实用的方法。
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