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Published in: Neural Computing and Applications 11/2019

06-07-2018 | Original Article

Analysing the effects of various switching probability characteristics in flower pollination algorithm for solving unconstrained function minimization problems

Authors: Fehmi Burcin Ozsoydan, Adil Baykasoglu

Published in: Neural Computing and Applications | Issue 11/2019

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Abstract

Due to their unique offerings, bio-inspired algorithms have become popular in problem solving. Flower pollination algorithm (FPA), which is relatively a new member of this family, is shown to be one promising algorithm and this optimizer is still open to possible enhancements. One of the reasons that adds to the popularity of FPA is indeed the simplicity in implementation. It has two basic procedures, namely global and local pollination, which correspond to global and local search, respectively. Moreover, a single parameter, referred to as switching probability, puts control on these search procedures. Thus, the mentioned switching probability actually defines the search characteristics throughout generations, which directly affects the success of FPA. Accordingly, the present work analyses the effects of various switching probability characteristics, including exponentially, linearly and sawtooth changing patterns. This is the main motivation of the present study. Secondarily, a systematically intensifying step size procedure, which is commonly ignored by most of the stochastic search algorithms, is adopted along with these strategies. The aim of the proposed step size function is to encourage a more intensified search towards the end, while providing a more diversified search at the initialization stage to avoid local optima and premature convergence. Thus, more promising results might be obtained. All developed modifications are tested by using well-known unconstrained function minimization problems. As demonstrated by several nonparametric statistical tests, results point out significant improvements over the standard FPA.

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Metadata
Title
Analysing the effects of various switching probability characteristics in flower pollination algorithm for solving unconstrained function minimization problems
Authors
Fehmi Burcin Ozsoydan
Adil Baykasoglu
Publication date
06-07-2018
Publisher
Springer London
Published in
Neural Computing and Applications / Issue 11/2019
Print ISSN: 0941-0643
Electronic ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-018-3602-2

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