PL EN


Preferencje help
Widoczny [Schowaj] Abstrakt
Liczba wyników
2014 | 2 | 413--420
Tytuł artykułu

Hybrid GA-ACO Algorithm for a Model Parameters Identification Problem

Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
In this paper, a hybrid scheme using Genetic Algorithm (GA) and Ant Colony Optimization (ACO) is introduced. In the hybrid GA-ACO, the GA is used to find feasible solutions to the considered optimization problem. Further ACO exploits the information gathered by GA. This process obtains a solution, which is at least as good as - but usually better than - the best solution devised by GA. To demonstrate the usefulness of the presented approach, the hybrid scheme is applied to parameter identification of E. coli MC4110 fed-batch fermentation process model. Moreover, a comparison with both the conventional GA and ACO is presented. The results show that the hybrid GA-ACO takes the advantages of both GA and ACO, thus enhancing the overall search ability and computational efficiency.(original abstract)
Rocznik
Tom
2
Strony
413--420
Opis fizyczny
Twórcy
  • Bulgarian Academy of Science
  • Polish Academy of Sciences
  • Bulgarian Academy of Science
Bibliografia
  • Acan A., "A GA + ACO Hybrid for Faster and Better Search Capability", In: Ant Algorithms: Proc. of the Third International Workshop, ANTS 2002, Lecture Notes in Computer Science, 2002.
  • AlMuhaideb S. and Menai M. El B., "A New Hybrid Metaheuristic for Medical Data Classification", Int. J. of Metaheuristics, Vol. 3(1), 2014, pp. 59-80.
  • Arndt M. and Hitzmann B., "Feed Forward/feedback Control of Glucose Concentration during Cultivation of Escherichia coli", 8th IFAC Int. Conf. on Comp. Appl. in Biotechn, Canada, 2001, pp. 425-429.
  • Battarra M., Pessoa A. A., Subramanian A. and Uchoa E., "Exact Algorithms for the Traveling Salesman Problem with Draft Limits", European Journal of Operational Research, Volume 235, Issue 1, 2014, pp. 115-128.
  • Blum C. and Roli A., "Metaheuristics in Combinatorial Optimization: Overview and Conceptual Comparison", ACM Computing Surveys, Vol. 35(3), 2003, pp. 268-308.
  • Bonabeau E., Dorigo M. and Theraulaz G., Swarm Intelligence: From Natural to Artificial Systems, New York,Oxford University Press, 1999.
  • Boussaid I., Lepagnot J. and Siarry P., "A Survey on Optimization Metaheuristics", Information Sciences, Vol. 237, 2013, pp. 82-117.
  • Csebfalv A., "A Hybrid Meta-heuristic Method for Continuous Engineering Optimization", Civil Engineering, Vol. 53/2, 2009, pp. 93-100.
  • Deniz Ulker E. and Haydar A., "A Hybrid Algorithm Based on Differential Evolution, Particle Swarm Optimization and Harmony Search Algorithms", n Proc. of FedCSIS conference, Poland, 2013, pp.417 - 420.
  • Dorigo M. and Stutzle T., "Ant Colony Optimization", MIT Press, 2004.
  • Dorigo M. and Stutzle T., Ant Colony Optimization, MIT Press, 2004.
  • Dumitrescu I. and Sttzle T., "Combinations of Local Search and Exact Algorithms", G.R. Raidl (Ed.) et al., Applications of Evolutionary Computation, Lecture Notes in Computer Science, Vol. 2611, 2003, pp. 211-223.
  • Georgieva A. and Jordanov I., "Hybrid Metaheuristics for Global Optimization using Low-discrepancy Sequences of Points", Computers and Operation Research, Vol. 37(3), 2010, pp. 456-469.
  • Glover F. and Kochenberger G. (Eds.), "Handbook of Metaheuristics", International Series in Operations Research and Management Science, Kluwer Academic Publishers, Vol. 57, 2003.
  • Goldberg D. E., "Genetic Algorithms in Search, Optimization and Machine Learning", Addison Wesley Longman, London, 2006.
  • Guangdong H. and Wang Q., "A Hybrid ACO-GA on Sports Competition Schedulingby Ant Colony Optimization - Methods and Applications", Edited by Avi Ostfeld, 2011, pp. 89-100.
  • Guangdong H., Ling P. and Wang Q., "A Hybrid Metaheuristic ACO-GA with an Application in Sports Competition Scheduling", Eighth ACIS International Conference on Software Engineering, Artificial Intelligence, Networking, and Parallel/Distributed Computing, Vol. 3, 2007, pp. 611-616.
  • Harvey N., "Use of Heuristics: Insights from Forecasting Research", Thinking & Reasoning, Vol. 13 Issue 1, 2007, pp. 5-24.
  • Holland J. H., "Adaptation in Natural and Artificial Systems", 2nd Edn. Cambridge, MIT Press, 1992.
  • http://www.doc.ic.ac.uk/ nd/surprise 96/journal/vol1/hmw/article1.html (last accessed April 14, 2014)
  • Lukasiewycz M., Gla M., Reimann F., and Teich J., "Opt4J - A Modular Framework for Meta-heuristic Optimization", In Proc. of the Genetic and Evolutionary Computing Conference (GECCO 2011), Dublin, Ireland, 2011, pp. 1723-1730.
  • Masrom S., Abidin S. Z. Z., Hashimah P. N., and Rahman A. S. Abd., "Towards Rapid Development of User Defined Metaheuristics Hybridisation", International Journal of Software Engineering and Its Applicatons, Vol. 5, 2011.
  • Roeva O. and Fidanova S., "Chapter 13. A Comparison of Genetic Algorithms and Ant Colony Optimization for Modeling of E. coli Cultivation Process", In book "Real-World Application of Genetic Algorithms", O. Roeva (Ed.), InTech, 2012, pp. 261-282.
  • Roeva O., "Improvement of Genetic Algorithm Performance for Identification of Cultivation Process Models", Advanced Topics on Evolutionary Computing, Book Series: Artificial Intelligence Series-WSEAS, 2008, pp. 34-39.
  • Roeva O., Fidanova S., Atanassova V., "Hybrid ACO-GA for Parameter Identification of an E. coli Cultivation Process Model", Large-Scale Scientific Computing, Lecture Notes in Computer Science 8353, Springer, Germany, ISSN 0302-9743, 2014, 288 - 295.
  • Roeva O., Pencheva T., Hitzmann B., Tzonkov St., "A Genetic Algorithms Based Approach for Identification of Escherichia coli Fed-batch Fermentation", Int. J. Bioautomation, Vol. 1, 2004, pp. 30-41.
  • Smith H., "Use of the Anchoring and Adjustment Heuristic by Children", Current Psychology: A Journal For Diverse Perspectives On Diverse Psychological Issues, Vol. 18 Issue 3,1999, pp. 294-300.
  • Talbi E. G. and El-ghazali (Ed.), "Hybrid Metaheuristics", Studies in Computational Intelligence, Vol. 434, 2013, XXVI, 458 p. 109 illus.
  • Talbi E. G., "A Taxonomy of Hybrid Metaheuristics", Journal of Heuristics, 8, 2002, pp. 541-564.
  • Tangpattanakul P., Jozefiwiez N. and Lopez P., "Biased Random Key Genetic Algorithm with Hybride Decoding for Multi-objective Optimization", In Proc. of FedCSIS conference, Poland, 2013, pp. 393 - 400.
  • Toutouh J., "Metaheuristics for Optimal Transfer of P2P Information in VANETs", MSc Thesis, University of Luxembourg, 2010.
  • Woeginger G. J., "Exact Algorithms for NP-Hard Problems: A Survey", Lecture Notes in Computer Science, Volume 2570, 2003, pp. 185-207.
  • Yi H., Duan Q. and Warren Liao T., "Three Improved Hybrid Metaheuristic Algorithms for Engineering Design Optimization", Applied Soft Computing, Vol. 13(5), 2013, pp. 2433-2444.
Typ dokumentu
Bibliografia
Identyfikatory
Identyfikator YADDA
bwmeta1.element.ekon-element-000171327021

Zgłoszenie zostało wysłane

Zgłoszenie zostało wysłane

Musisz być zalogowany aby pisać komentarze.
JavaScript jest wyłączony w Twojej przeglądarce internetowej. Włącz go, a następnie odśwież stronę, aby móc w pełni z niej korzystać.