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Fruit Fly Optimization Algorithm Based on Single-Gene Mutation for High-Dimensional Unconstrained Optimization Problems

机译:基于单基因突变的果蝇优化算法求解高维无约束优化问题

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摘要

The fruit fly optimization (FFO) algorithm is a new swarm intelligence optimization algorithm. In this study, an adaptive FFO algorithm based on single-gene mutation, named AFFOSM, is designed to aim at inefficiency under all-gene mutation mode when solving the high-dimensional optimization problems. The use of a few adaptive strategies is core to the AFFOSM algorithm, including any given population size, mutation modes chosen by a predefined probability, and variation extents changed with the optimization progress. At first, an offspring individual is reproduced from historical best fruit fly individual, namely, elite reproduction mechanism. And then either uniform mutation or Gauss mutation happens by a predefined probability in a randomly selected gene. Variation extent is dynamically changed with the optimization progress. The simulation results show that AFFOSM algorithm has a better accuracy of convergence and capability of global search than the ESSMER algorithm and several improved versions of the FFO algorithm.
机译:果蝇优化(FFO)算法是一种新型的群体智能优化算法。本研究设计了一种基于单基因突变的自适应FFO算法AFFOSM,旨在解决全基因突变模式下求解高维优化问题时效率低下的问题。使用一些自适应策略是 AFFOSM 算法的核心,包括任何给定的种群规模、由预定义概率选择的突变模式以及随优化进度而变化的变异范围。首先,后代个体是从历史上最好的果蝇个体中繁殖出来的,即精英繁殖机制。然后,在随机选择的基因中,均匀突变或高斯突变以预定义的概率发生。变化范围会随着优化进度而动态变化。仿真结果表明,与ESSMER算法和FFO算法的几种改进版本相比,AFFOSM算法具有更好的收敛精度和全局搜索能力。

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