ORTHOGONAL-MAXIMIN LATIN HYPERCUBE DESIGNS 论文

2008引用 267
Advanced Multi-Objective Optimization AlgorithmsVLSI and FPGA Design TechniquesOptimal Experimental Design Methods

摘要

A randomly generated Latin hypercube design (LHD) can be quite structured: the variables may be highly correlated or the design may not have good space-filling properties. There are procedures to find good LHDs by minimizing the pairwise correlations or maximizing the inter-site distances. In this article we have shown that these two criteria need not agree with each other. In fact, maximization of inter-site distances can result in LHDs where the variables are highly correlated and vice versa. Therefore, we propose a multi-objective optimization approach to find good LHDs by combining correlation and distance performance measures. We also propose a new exchange algorithm for efficiently generating such designs. Several examples are presented to show that the new algorithm is fast and that the optimal designs are good in terms of both the correlation and distance criteria.