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Dynamic Diversity Population Based Flower Pollination Algorithm for Multimodal Optimization

机译:基于动态分集人口的粉花授粉算法,用于多峰优化

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Easy convergence to a local optimum, rather than global optimum could unexpectedly happen in practical multimodal optimization problems due to interference phenomena among physically constrained dimensions. In this paper, an altering strategy for dynamic diversity Flower pollination algorithm (FPA) is proposed for solving the multimodal optimization problems. In this proposed method, the population is divided into several small groups. Agents in these groups are exchanged frequently the evolved fitness information by using their own best historical information and the dynamic switching probability is to provide the diversity of searching process. A set of the benchmark functions is used to test the quality performance of the proposed method. The experimental result of the proposed method shows the better performance in comparison with others methods.
机译:由于物理受约束尺寸之间的干扰现象,容易收敛到本地最佳,而不是全球最佳,而不是全球优化可能会发生在实际的多模式优化问题中。本文提出了一种动态分集花授粉算法(FPA)的改变策略,用于解决多峰优化问题。在这种提出的方​​法中,人口分为几个小组。这些组中的代理经常通过使用自己的最佳历史信息来交换演进的健身信息,并且动态切换概率是提供搜索过程的多样性。一组基准函数用于测试所提出的方法的质量性能。所提出的方法的实验结果表明了与其他方法相比的更好的性能。

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