Profile
International Journal of Computer & Software Engineering Volume 4 (2019), Article ID 4:IJCSE-150, 7 pages
https://doi.org/10.15344/2456-4451/2019/150
Research Article
Evolutionary Algorithms: Multimodal Problems and Spatial Distribution

Ruben Martinez, Julio C Puche*, Francisco J Delgado and Javier Finat

MoBiVAP R&D Group, Scientific Park, University of Valladolid, 47002 Valladolid, Spain
Dr. Julio César Puche Regaliza, MoBiVAP R&D Group, Scientific Park, University of Valladolid, C/Plaza de Santa Cruz, 8, 47002 Valladolid, Spain; E-mail: pucheregaliza@gmail.com
12 July 2019; 11 December 2019; 13 December 2019
Martínez R, Puche JC, Delgado F, Finat J (2019) Evolutionary Algorithms: Multimodal Problems and Spatial Distribution. Int J Comput Softw Eng 4: 150. doi: https://doi.org/10.15344/2456-4451/2019/150

References

  1. Eiben A, Smith J (2003) Multimodal Problems and Spatial Distribution. Introduction to Evolutionary Computing. Springer. View
  2. Mahfoud S (1995) Niching methods for Genetic Algorithms. University of Illinois. View
  3. Barr N (2012) Economics of welfare state. Oxford University Press. View
  4. Sareni B, Krähenbühk L (2002) Fitness sharing and niching methods revised. IEEE Transactions on Evolutionary Computation. View
  5. Rogers A, Prugel-Bennett A (1999) Genetic drift in genetic algorithm selection schemes. IEEE Transactions on Evolutionary Computation. View
  6. Alba E, Tomassini M (2002) Parallelism and evolutionary algorithms. IEEE Transactions on Evolutionary Computation. View
  7. Tomassini M (2005) Spatially Structured Evolutionary Algorithms. Artificial Evolution in Space and Time. Springer.
  8. Gustafson S, Burke E (2006) The Speciating Island Model: An alternative parallel evolutionary algorithm. Journal of Parallel and Distributed Computing 66: 1025-1036. View
  9. Tomassini M (2010) Cellular Evolutionary Algorithms. Understanding Complex Systems. View
  10. Skolicki Z, De Jong K (2004) Improving Evolutionary Algorithms with Multirepresentation Island Models. Lecture Notes in Computer Science. View
  11. Skolicki Z, De Jong K (2005) The influence of migration sizes and intervals on islands models. View
  12. Giacobini M, Alba E, Tettamanzi A, Tomassini M (2004) Modeling Selection Intensity for toroidal Cellular Evolutionary Algorithms. Lecture Notes in Computer Science. View
  13. Alba E, Dorronsoro B (2004) Solving the vehicle routing problem by using cellular genetic algorithms. Evolutionary Computation in Combinatorial Optimization. Lecture Notes in Computer Sciences. View
  14. Alba E, Giacobini M, Tomassini M, Romero S (2002) Comparing synchronous and asynchronous cellular genetic algorithms. Proceedings of the International Conference on Parallel problem Solving from Nature. Lecture Notes in Computer Science. View
  15. Alba E, Troya J (2000) Cellular evolutionary algorithms: Evaluating the influence of ration. Proceedings of the International Conference on Parallel Problem Solving from Nature. Lecture Notes Computer Sciences. View
  16. Folino G, Pizzuti C, Spezzano G (1998) Combining cellular genetic algorithms and local search for solving satisfiability problems. Proceedings of the IEEE International Conference on Tools with Artificial Intelligence. View
  17. Folino G, Spezzano G (2000) A cellular environment for steering high performance scientific computations. Proceedings of the International Conference on Parallel Computing: Fundamentals & Applications.
  18. Cantú-Paz E (2001) Efficient and Accurate Parallel Genetic Algorithms. Kluwer Academic Publishers.
  19. Goldberg D, Richardson J (1987) Genetic algorithms with sharing for Multimodal Function Optimization. Genetic Algorithms and their Applications. Proceedings of the Second International Conference on Genetic Algorithms. View
  20. Oei C, Godberg D, Chang S (1991) Tournament selection, niching and the preservation of diversity Technical Report, University of Illinois. View
  21. Petrowski A (1996) A clearing procedure as a niching method for genetic algorithm. Proceedings IEEE International Conference. View
  22. Pérez E, Herrera F, Hernández C (2003) Finding multiple solutions in job shop scheduling by niching genetic algorithms. Journal of Intelligent Manufacturing 14: 323-339. View
  23. Finat J, Riol R, Hurtado A (2010) Diagramas de Voronoi Pesados y Optimización Multicriterio para bienes y servicios en SIG. Conferencia Iberoamericana en Sistemas, Cibernética e Informática.
  24. Nebro A, Alba E, Luna F (2004) Optimización Multi-Objetivo y Computación Grid. Actas del Tercer Congreso Español de Metaheurísticas, Algoritmos Evolutivos y Bioinspirados.
  25. Xiao N, Armstrong M (2003) A Specialized Island Model and Its Application in Multi objective Optimization. Genetic and Evolutionary Computing. Lecture Notes in Computer Science. View
  26. Schaffer J (1985) Some experiments in machine learning using vector evaluated genetic algorithms. Thesis. View
  27. Grignon P, Fadel G (1999) Configuration design optimization method. Proceedings of Design Engineering Technical Conferences and Computers and Information in Engineering Conference.
  28. Arslan T, Horrocks D, Ozd mir E (1996) Structural synthesis of cell-based VLSI circuits. Electronic Letters. View
  29. Murata T, Ishibuchi H (1996) MOGA: multi-objective genetic algorithms. IEEE International Conference on Evolutionary Computation. View
  30. Sastry K, Johnson D, Thompson L, Goldberg D, Martínez T, et al. (2006) Multiobjective Genetic Algorithms for Multiscaling Excited State Direct Dynamics in Photochemistry. The Genetic and Evolutionary Computation Conference. View
  31. Liu Y, Özyer T, Alhadj R, Barker K (2005) Integrating Multi-Objective Genetic Algorithm and Validity Analysis for Locating and Ranking Alternative Clustering. Informatica.
  32. Srinivas N, Deb K (1994) Multiobjective Optimization Using Nondominated Sorting in Genetic Algorithms. Evolutionary Computation 2:. 221-248. View
  33. Nesmachnow S (2004) Una versión Paralela del Algoritmo Evolutivo para Optimización Multiobjetivo NSGA-II y su Aplicación al Diseño de Redes de Comunicaciones confiables. X Congreso Argentino de Ciencias de la Computación.
  34. Zitzler E, Thiele L (1999) Multiobjective Evolutionary Algorithms: A Comparative Case Study and the Strength Pareto Approach. Lecture Notes in Computer Science. View
  35. Das I, Dennis J (1997) A closer look at drawbacks of minimizing weighted sums of objectives for Pareto set generation in multicriteria optimization problems. Struct Optim 14: 63-69. View
  36. Goldberg D (1989) Genetic Algorithms in search, optimization, and machine learning. Addison Wesley. View