Title of article :
Batch sequential designs for computer experiments
Author/Authors :
Loeppky، نويسنده , , Jason L. and Moore، نويسنده , , Leslie M. and Williams، نويسنده , , Brian J.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
Computer models simulating a physical process are used in many areas of science. Due to the complex nature of these codes it is often necessary to approximate the code, which is typically done using a Gaussian process. In many situations the number of code runs available to build the Gaussian process approximation is limited. When the initial design is small or the underlying response surface is complicated this can lead to poor approximations of the code output. In order to improve the fit of the model, sequential design strategies must be employed. In this paper we introduce two simple distance based metrics that can be used to augment an initial design in a batch sequential manner. In addition we propose a sequential updating strategy to an orthogonal array based Latin hypercube sample. We show via various real and simulated examples that the distance metrics and the extension of the orthogonal array based Latin hypercubes work well in practice.
Keywords :
Maximin distance , Latin hypercube sample , entropy , Gaussian process , Computer experiment , Random function
Journal title :
Journal of Statistical Planning and Inference
Journal title :
Journal of Statistical Planning and Inference