Skip to main content
Log in

Planning optimization-simulation experiments

  • Published:
Cybernetics and Systems Analysis Aims and scope

Abstract

The paper presents a possible approach to experiment planning for simulation applications developed based on the concept of optimization-simulation integration and models of metaheuristic optimization strategies. The prospects of this approach are considered.

This is a preview of subscription content, log in via an institution to check access.

Access this article

Price excludes VAT (USA)
Tax calculation will be finalised during checkout.

Instant access to the full article PDF.

Similar content being viewed by others

References

  1. R. M. Fujimoto, “Parallel and distributed simulation,” in: Proc. Winter Simulation Conf. (1999), pp. 122–131.

  2. D. M. Davis, G. D. Baer, and T. D. Gottschalk, “21st century simulation: Exploiting high performance computing and data analysis,” in: Interservice/Industry Training Simulation and Education Conf., Paper No. 1517 (2004), pp. 1–14.

  3. D. Whitley, “An overview of evolutionary algorithms,” J. Inform. Software Techn., 43, 817–831 (2001).

    Article  Google Scholar 

  4. M. Fu, “Optimization for simulation: Theory and practice,” INFORMS J. on Comput., No. 14 (3), 192–215 (2002).

  5. J. April, F. Glover, J. P. Kelly, and M. Laguna, “Practical introduction to simulation optimization,” in: Proc. Winter Simulation Conf. (2003), pp. 71–78.

  6. T. J. Oren and B. P. Zeigler, “Concepts for advanced simulation methodologies,” Simulation, 32, March, 69–82 (1979).

  7. High Level Architecture, http://www.dmso.mil/public/transition/hla.

  8. O. Balci, “Verification, validation and certification of modeling and simulation applications,” in: Proc. Winter Simulation Conf. (2003), pp. 150–158.

  9. R. G. Sargent, “Validation and verification of simulation models,” in: Proc. Winter Simulation Conf. (2004), pp. 17–28.

  10. A. M. Law and M. G. McComas, “How to build valid and credible simulation models,” in: Proc. Winter Simulation Conf. (2001), pp. 22–29.

  11. J. S. Carson, “Model verification and validation,” in: Proc. Winter Simulation Conf. (2002), pp. 52–58.

  12. G. E. Horne and T. E Meyer, “Data farming: Discovering surprise,” in: Proc. Winter Simulation Conf. (2005), pp. 1082–1087.

  13. V. A. Pepelyaev, M. A. Sakhnyuk, Yu. M. Chernyi, and N. D. Shvab, “On implementation of metaheuristic strategies of simulation optimization,” Komp. Matematika, No. 2, 26–33 (2005).

  14. T. P. Mar’yanovich, S. A. Petrosyan, and V. B. Raspopov, “Dialogue method in directed initiative simulation,” Cybernetics, Vol. 14, No. 3, 378–382 (1978).

    Article  Google Scholar 

  15. T. N. Galagan, V. V. Gusev, T. P. Mar’yanovich, and N. M. Yatsenko, “An approach to automation of designing a distributed model from its concentrated analog,” Probl. Programmir., No. 1–2, 182–187 (2002).

  16. A. B. Pritsker, Introduction to Simulation and SLAM II, Wiley, New York (1984).

    Google Scholar 

  17. V. P. Koval’, V. A. Pepelyaev, and Yu. M. Chernyi, “On analysis of alternate solutions by simulation methods,” Teor. Optym. Rishen’, No. 3, 19–26 (2004).

Download references

Author information

Authors and Affiliations

Authors

Additional information

__________

Translated from Kibernetika i Sistemnyi Analiz, No. 6, pp. 112–125, November–December 2006.

Rights and permissions

Reprints and permissions

About this article

Cite this article

Pepelyaev, V.A. Planning optimization-simulation experiments. Cybern Syst Anal 42, 866–875 (2006). https://doi.org/10.1007/s10559-006-0126-z

Download citation

  • Received:

  • Issue Date:

  • DOI: https://doi.org/10.1007/s10559-006-0126-z

Keywords

Navigation