Browse > Article
http://dx.doi.org/10.5391/JKIIS.2008.18.3.392

A Novel Optimization Algorithm Inspired by Bacteria Behavior Patterns  

Jung, Sung-Hoon (Department of Information and Communication Engineering, Hansung University)
Kim, Tae-Geon (Department of Information and Communication Engineering, Hansung University)
Publication Information
Journal of the Korean Institute of Intelligent Systems / v.18, no.3, 2008 , pp. 392-400 More about this Journal
Abstract
This paper proposes a novel optimization algorithm inspired by bacteria behavior patterns for foraging. Most bacteria can trace attractant chemical molecules for foraging. This tracing capability of bacteria called chemotaxis might be optimized for foraging because it has been evolved for few millenniums. From this observation, we developed a new optimization algorithm based on the chemotaxis of bacteria in this paper. We first define behavior and decision rules based on the behavior patterns of bacteria and then devise an optimization algorithm with these behavior and decision rules. Generally bacteria have a quorum sensing mechanism that makes it possible to effectively forage, but we leave its implementation as a further work for simplicity. Thereby, we call our algorithm a simple bacteria cooperative optimization (BCO) algorithm. Our simple BCO is tested with four function optimization problems on various' parameters of the algorithm. It was found from experiments that the simple BCO can be a good framework for optimization.
Keywords
Optimization; Bio-inspired engineering; Bacteria behavior patterns; Bacteria chemotaxis;
Citations & Related Records
연도 인용수 순위
  • Reference
1 K. M. Passino, "Biomimicry of Bacterial Foraging for Distributed Optimization and Control," IEEE Control Systems Magazine, vol. 22, pp. 52-67, June 2002   DOI
2 S. D. Muller, J. Marchetto, S. Airaghi, and P. Koumoutsakos, "Optimization Based on Bacterial Chemotaxis," IEEE Transactions on Evolutionary Computation, vol. 6, pp. 16-29, Feb. 2002   DOI   ScienceOn
3 R. C. Eberhart, Y. Shi, and J. Kennedy, Swarm Intelligence. Morgan Kaufmann, 2001
4 L. N. de Castro and J. Timmis, Artificial Immune Systems: A New Computational Intelligence Approach. Oxford University Press, 2002
5 W.-S. Jwo, C.-W. Liu, and C.-C. Liu, "Large-scale optimal VAR planning by hybrid simulated annealing/genetic algorithm," International Journal of Electrical Power and Energy Systems, vol. 21, pp. 39-44, Jan. 1999   DOI   ScienceOn
6 Y. Liu and K. M. Passino, "Biomimicry of Social Foraging Bacteria for Distributed Optimization: Models, Principles, and Emergent Behaviors," Journal of Optimization Theory and Applications, vol. 115, pp. 603-628, Dec. 2002   DOI   ScienceOn
7 T.-H. Kim, S. H. Jung, and K.-H. Cho, "Investigations into the design principles in the chemotactic behavior of Escherichia coli," BioSystems, vol. 91, pp. 171-182, Jan. 2008   DOI   ScienceOn
8 K. DeJong, An Analysis of the Behavior of a Class of Genetic Adaptive Systems. PhD thesis, University of Michigan, 1975
9 H. C. Berg and D. A. Brown, "Chemotaxis in escheichia coli analysed by three-dimensional tracking," Nature, vol. 239, pp. 500-504, 1972   DOI   ScienceOn
10 S. H. Jung, "Queen-bee evolution for genetic algorithms," Electronics Letters, vol. 39, pp. 575-576, Mar. 2003   DOI   ScienceOn
11 M. Kim, S. Baek, S. H. Jung, and K.-H. Cho, "Dynamical characteristics of bacteria clustering by self-generated attractants," Computational Biology and Chemistry, vol. 31, pp. 328-334, Oct. 2007   DOI   ScienceOn
12 E. Bonabeau, M. Dorigo, and G. Theraulaz, Swarm Intelligence: From Natural to Artificial Systems. Oxford University Press, 1999
13 J. Andre, P. Siarry, and T. Dognon, "An improvement of the standard genetic algorithm fighting premature convergence in continuous optimization," Advances in engineering software, vol. 32, no. 1, pp. 49-60, 2001   DOI   ScienceOn
14 M. Dorigo and T. Stutzle, Ant Colony Optimization. The MIT Press, 2004
15 L. Turner, W. S. Ryu, and H. C. Berg, "Real-time imaging of fluorescent flagellar filaments," Journal of Bacteriology, vol. 182, pp. 2793-2801, May 2000   DOI   ScienceOn
16 M. Clerc, Particle Swarm Optimization. ISTE Publishing Company, 2006
17 C. Xudong, Q. Jingen, N. Guangzheng, Y. Shiyou, and Z. Mingliu, "An Improved Genetic Algorithm for Global Optimization of Electromagnetic Problems,'' IEEE Transactions on Magnetics, vol. 37, pp. 3579-3583, Sept. 2001   DOI   ScienceOn
18 D. Goldberg, Genetic Algorithms in Search, Optimization and Machine Learning. Reading, MA: Addison-Wesley, 1989
19 D. B. Fogel, "An Introduction to Simulated Evolutionary Optimization," IEEE Transactions on Neural Networks, vol. 5, pp. 3-14, Jan. 1994   DOI   ScienceOn