Convergence Study of Biogeography Based OptimizationAuthor : D. K. Mishra, Vikas Shinde, Kamal Wadhwa and Sanjay Chaudhary
Volume 7 No.3 October-December 2018 pp 33-38
Biogeography based optimization BBO is a progressive algorithm. It is induced by Biogeography. BBO is more powerful algorithm among the biology based optimization methods. In this paper examines the convergence of BBO algorithm on some fitness functions. BBO algorithm handles the best solution from one off spring to the next converges to the universal optimum. The convergence rate evaluate of BBO algorithm by simulation for some fitness function. A set of 12 standard benchmark function performance of convergence is studied by BBO algorithm.
BBO Algorithm, Migration, Mutation, Emigration
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