Metamodeling by using Multiple Regression Integrated K-Means Clustering Algorithm

被引:0
|
作者
Irfanoglu, Emre [1 ]
Akgun, Ilker [1 ]
Gunal, Murat M. [1 ]
机构
[1] Turkish Naval Acad, Inst Naval Sci & Engn, Istanbul, Turkey
来源
EMERGING M&S APPLICATIONS IN INDUSTRY AND ACADEMIA SYMPOSIUM AND THE MODELING AND HUMANITIES SYMPOSIUM 2013 (EAIA AND MATH 2013) - 2013 SPRING SIMULATION MULTI-CONFERENCE (SPRINGSIM'13) | 2013年 / 45卷 / 05期
关键词
simulation optimization; K-means clustering; metamodel; multi regression; OPTIMIZATION; SIMULATION;
D O I
暂无
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
A metamodel in simulation modeling, as also known as response surfaces, emulators, auxiliary models, etc. relates a simulation model's outputs to its inputs without the need for further experimentation. A metamodel is essentially a regression model and mostly known as "the model of a simulation model". A metamodel may be used for Validation and Verification, sensitivity or what-if analysis, and optimization of simulation model. In this study, we proposed a new metamodeling approach by using multiple regression integrated K-means clustering algorithm especially for simulation optimization. Our aim is to evaluate the feasibility of a new metamodeling approach in which we create multiple metamodels by clustering input-output variables of a simulation model according to their similarities. In this approach, first, we run the simulation model of a system, second, by using K-Means clustering algorithm, we create metamodels for each cluster, and third, we seek the minima (or maxima) for each metamodel. We also tested our approach by using a fictitious call center. We observed that this approach increases the accuracy of a metamodel and decreases the sum of squared errors. These observations give us some insights about usefulness of clustering in metamodeling for simulation optimization.
引用
收藏
页码:55 / 62
页数:8
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