Advanced search
1 file | 91.06 KB
Author
Organization

Downloads

  • Gorelik Borodin.pdf
    • full text
    • |
    • open access
    • |
    • PDF
    • |
    • 91.06 KB

Citation

Please use this url to cite or link to this publication:

Chicago
Gorelik, Victor, Wim De Bruyn, and Dmitriy Borodin. 2010. “Heuristic Ideas of Using Genetic Algorithm for Solving Lot-size Production Scheduling Problems.” In Proceedings of the 11th International Scientific Conference : Software for Mathematical Computations and Its Applications. Smolensk, Russia: Smolensk State University.
APA
Gorelik, V., De Bruyn, W., & Borodin, D. (2010). Heuristic ideas of using genetic algorithm for solving lot-size production scheduling problems. Proceedings of the 11th international scientific conference : software for mathematical computations and its applications. Presented at the 11th International Scientific Conference, Smolensk, Russia: Smolensk State University.
Vancouver
1.
Gorelik V, De Bruyn W, Borodin D. Heuristic ideas of using genetic algorithm for solving lot-size production scheduling problems. Proceedings of the 11th international scientific conference : software for mathematical computations and its applications. Smolensk, Russia: Smolensk State University; 2010.
MLA
Gorelik, Victor, Wim De Bruyn, and Dmitriy Borodin. “Heuristic Ideas of Using Genetic Algorithm for Solving Lot-size Production Scheduling Problems.” Proceedings of the 11th International Scientific Conference : Software for Mathematical Computations and Its Applications. Smolensk, Russia: Smolensk State University, 2010. Print.
@inproceedings{1147298,
  author       = {Gorelik, Victor and De Bruyn, Wim and Borodin, Dmitriy},
  booktitle    = {Proceedings of the 11th international scientific conference : software for mathematical computations and its applications},
  isbn         = {9785880184453},
  language     = {eng},
  location     = {Smolensk, Russia},
  pages        = {4},
  publisher    = {Smolensk State University},
  title        = {Heuristic ideas of using genetic algorithm for solving lot-size production scheduling problems},
  year         = {2010},
}