LGMS-FOA: An improved fruit fly optimization algorithm for solving optimization problems

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Abstract

Recently, a new fruit fly optimization algorithm (FOA) is proposed to solve optimization problems. In this paper, we empirically study the performance of FOA. Six different nonlinear functions are selected as testing functions. The experimental results illustrate that FOA cannot solve complex optimization problems effectively. In order to enhance the performance of FOA, an improved FOA (named LGMS-FOA) is proposed. Simulation results and comparisons of LGMS-FOA with FOA and other metaheuristics show that LGMS-FOA can greatly enhance the searching efficiency and greatly improve the searching quality. © 2013 Dan Shan et al.

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CITATION STYLE

APA

Shan, D., Cao, G., & Dong, H. (2013). LGMS-FOA: An improved fruit fly optimization algorithm for solving optimization problems. Mathematical Problems in Engineering, 2013. https://doi.org/10.1155/2013/108768

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