ACM Home Page
Please provide us with feedback. Feedback
Sensitivity analysis and optimization in simulation: design of experiments and case studies
Full text PdfPdf (751 KB)
Source Winter Simulation Conference archive
Proceedings of the 27th conference on Winter simulation table of contents
Arlington, Virginia, United States
Pages: 133 - 140  
Year of Publication: 1995
ISBN:0-7803-3018-8
Author
Jack P. C. Kleijnen  Department of Information Systems and Auditing/Center for Economic Research (CentER), School of Management and Economics, Tilburg University (Katholieke Universiteit Brabant), 5000 LE Tilburg, Netherlands
Sponsors
IIE : Institute of Industrial Engineers
SCS : Society for Computer Simulation
ASA : American Statistical Association
NIST : National Institue of Standards & Technology
IEEE-CS : Computer Society
IEEE-SMCS : Systems, Man & Cybernetics Society
ACM: Association for Computing Machinery
INFORMS/CS : Computer Science TC
SIGSIM: ACM Special Interest Group on Simulation and Modeling
Publisher
IEEE Computer Society  Washington, DC, USA
Bibliometrics
Downloads (6 Weeks): 5,   Downloads (12 Months): 44,   Citation Count: 5
Additional Information:

abstract   references   cited by   index terms   collaborative colleagues  

Tools and Actions: Review this Article  
DOI Bookmark: Use this link to bookmark this Article: http://doi.acm.org/10.1145/224401.224454
What is a DOI?

ABSTRACT

This paper is an advanced tutorial on the use of statistical techniques in sensitivity analysis, including the application of these techniques to optimization and validation of simulation models. Sensitivity analysis is divided into two phases. The first phase is a pilot stage, which consists of screening or searching for the important factors; a simple technique is sequential bifurcation. In the second phase, regression analysis is used to approximate the input/output behavior of the simulation model. This regression analysis gives better results when the simulation experiment is well designed, using classical statistical designs such as fractional factorials. To optimize the simulated system, Response Surface Methodology (RSM) is applied; RSM combines regression analysis, design of experiments, and steepest ascent. To validate a simulation model that lacks input/output data, again regression analysis and design of experiments are applied. Several case studies are summarized; they illustrate how in practice statistical techniques can make simulation studies give more general results, in less time.


REFERENCES

Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.

 
1
Bettonvil, B. and J.P.C. Kleijnen. 1994. Identifying the important factors in simulation models with many factors. Tilburg University.
 
2
 
3
Ho,Y. and X. Cao. 1991. Perturbation analysis of discrete event systems. Dordrecht: Kluwer.
4
 
5
 
6
 
7
Kleijnen, J.P.C. 1995a. Verification and validation of simulation models. European Journal of Operational Research 82:145-162.
 
8
Kleijnen, J.P.C. 1995b. Statistical validation of simulation models: a case-study. European Journal of Operational Research (in press).
 
9
Kleijnen, J.P.C. 1996. Simulation: sensitivity analysis and optimization through regression analysis and experimental design. In Proceedings of NATO Advanced Study Institute on Current Issues and Challenges in the Reliability and Maintenance of Complex Systems, Heidelberg: Springer-Verlag.
 
10
Kleijnen, J.P.C, B. Bettonvil, and W. Van Groenendaal. 1995. Validation of simulation models: regression analysis revisited. Tilburg University.
 
11
Kleijnen, J.P.C., G. Van Ham, and J. Rotmans. 1992. Techniques for sensitivity analysis of simulation models: a case study of the CO2 greenhouse effect. Simulation 58: 410-417.
 
12
 
13
Oren, T.I. 1993. Three simulation experimentation environments: SIMAD, SIMGEST, and E/SLAM. In Proceedings of the 1993 European Simulation Symposium. La Jolla: Society for Computer Simulation.
 
14
Rubinstein, R.Y. and A. Shapiro. 1993. Discrete event systems: sensitivity analysis and stochastic optimization via the score function method, New York: Wiley.
 
15
Van Groenendaal, W. 1994. Investment analysis and DSS for gas transmission on Java. Tilburg (Netherlands): Tilburg University.
 
16
Van Meel, J. 1994. The dynamics of business engineering. Delft (Netherlands): Delft University.
 
17


Collaborative Colleagues:
Jack P. C. Kleijnen: colleagues