View More View Less
  • 1 Széchenyi István University Department of Information Technology, Jedlik Ányos Faculty of Engineering Egyetem tér 1 H-9026 Győr Hungary
  • 2 Széchenyi István University Department of Physics and Chemistry, Jedlik Ányos Faculty of Engineering Egyetem tér 1 H-9026 Győr Hungary
Restricted access

Purchase article

USD  $25.00

Purchase this article

USD  $387.00

Genetic algorithms are widely used in engineering, to solve nonlinear, multi-target optimization problems with multiple variables (e.g. optimization of geometry of flow domains, parameters of control systems). The parallelization of software using genetic algorithms is very important because in a typical practical problem they need huge computational power. Fortunately it is easy to implement a master-slave style parallelization. Our goal was to investigate the effect of random errors that can occur in a cluster of workstations on the efficiency of the genetic algorithm.

  • Horváth, A., Horváth Z. Optimal shape design of diesel intake ports with evolutionary algorithm, Proceedings of 5th European conference on numerical mathematics and advanced applications (ENUMATH 2003) Edited by Feistauer, M. et al., Springer Verlag, 2004, pp. 459–470.

  • Cantu-Paz, E. Designing Efficient Master-Slave Parallel Genetic Algorithms, Genetic Programming 1998: Proceedings of the Third Annual Conference , University of Wisconsin, 1998, pp. 455–463.

  • Gagné, C., Parizeau, M., Dubreuil, M. The Master-Slave Architecture for Evolutionary Computations Revisited, Proceedings of Genetic and Evolutionary Computation (GECCO 2003) Edited by Cantu-Paz, E. et al., Berlin, Springer Verlag, 2003, pp 1578–1579.

    Dubreuil M. , '', in Proceedings of Genetic and Evolutionary Computation (GECCO 2003) , (2003 ) -.

  • Goldberg, D. E. Genetic Algorithms in Search, Optimization, and Machine Learning Addison-Wesley Publishing Company, Inc., 1989.

  • Whitley D. An overview of evolutionary algorithms: practical issues and common pitfalls, Information and Software Technology , 2001, pp. 817–831.

  • Marco-Blaszka N., Désidéri J. Numerical solution of optimization test-cases by genetic algorithms, INRIA Research Report 3622 , 1999.

Monthly Content Usage

Abstract Views Full Text Views PDF Downloads
Sep 2020 0 0 0
Oct 2020 0 0 0
Nov 2020 2 1 0
Dec 2020 0 0 0
Jan 2021 0 0 0
Feb 2021 2 0 0
Mar 2021 0 0 0