Numerical studies of space‐filling designs: optimization of Latin Hypercube Samples and subprojection properties

Numerical studies of space‐filling designs: optimization of Latin Hypercube Samples and subprojection properties

0.00 Avg rating0 Votes
Article ID: iaor20135395
Volume: 7
Issue: 4
Start Page Number: 276
End Page Number: 289
Publication Date: Nov 2013
Journal: Journal of Simulation
Authors: , ,
Keywords: statistics: sampling
Abstract:

Quantitative assessment of the uncertainties tainting the results of computer simulations is nowadays a major topic of interest in both industrial and scientific communities. One of the key issues in such studies is to get information about the output when the numerical simulations are expensive to run. This paper considers the problem of exploring the whole space of variations of the computer model input variables in the context of a large dimensional exploration space. Various properties of space‐filling designs are justified: interpoint‐distance, discrepancy, minimum spanning tree criteria. A specific class of design, the optimized Latin Hypercube Sample, is considered. Several optimization algorithms, coming from the literature, are studied in terms of convergence speed, robustness to subprojection and space‐filling properties of the resulting design. Some recommendations for building such designs are given. Finally, another contribution of this paper is the deep analysis of the space‐filling properties of the design 2D‐subprojections.

Reviews

Required fields are marked *. Your email address will not be published.