Enhancing Stochastic Kriging for Queueing Simulation with Stylized Models
Mar 31, 2018·

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0 min read
Haihui Shen
L. Jeff Hong
Xiaowei Zhang
Abstract
Stochastic kriging is a popular metamodeling technique to approximate computationally expensive simulation models. However, it typically treats the simulation model as a black box in practice and often fails to capture the highly nonlinear response surfaces that arise from queueing simulations. We propose a simple, effective approach to improve the performance of stochastic kriging by incorporating stylized queueing models which contain useful information about the shape of the response surface. We provide several statistical tools to measure usefulness of the incorporated stylized models. We show that even a relatively crude stylized model can improve the prediction accuracy of stochastic kriging substantially.
Type
Publication
IISE Transactions 50(11):943–958

Authors
Associate Professor in the Sino-US Global Logistics Institute, Shanghai Jiao Tong University.

Authors
Professor in Department of Industrial and Systems Engineering at the University of Minnesota.

Authors
I am an Associate Professor at HKUST, jointly appointed in the Department of Industrial Engineering and Decision Analytics and the Department of Economics, and the Academic Director of the MSc in FinTech program. I serve as an Associate Editor for several leading journals in the field, including Management Science, Operations Research, Navel Research Logistics, and Queueing Systems.