4.4 Article

Robust Optimization in Simulation: Taguchi and Krige Combined

期刊

INFORMS JOURNAL ON COMPUTING
卷 24, 期 3, 页码 471-484

出版社

INFORMS
DOI: 10.1287/ijoc.1110.0465

关键词

statistics, design of experiments; inventory production, simulation; decision analysis: risk

资金

  1. CentER
  2. Department of Information Engineering (University of Siena)
  3. Italian Ministry of Education [2007ZMZK5T]

向作者/读者索取更多资源

Optimization of simulated systems is the goal of many methods, but most methods assume known environments. We, however, develop a robust methodology that accounts for uncertain environments. Our methodology uses Taguchi's view of the uncertain world but replaces his statistical techniques by design and analysis of simulation experiments based on Kriging (Gaussian process model); moreover, we use bootstrapping to quantify the variability in the estimated Kriging metamodels. In addition, we combine Kriging with nonlinear programming, and we estimate the Pareto frontier. We illustrate the resulting methodology through economic order quantity (EOQ) inventory models. Our results suggest that robust optimization requires order quantities that differ from the classic EOQ. We also compare our results with results we previously obtained using response surface methodology instead of Kriging.

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