基于Lozi混沌映射的混合果蝇优化算法

Huixia Luo, Guidong Zhang, Yongjun Shen, Jialin Hu
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引用次数: 3

摘要

混合果蝇优化算法LGM-FOA (Logistic Mapping-FOA)是一种基于Logistic映射的改进混合果蝇算法,但由于Logistic映射存在三个不连续点,该算法在优化过程中在收敛精度和稳定性方面表现出较理想的状态。为了解决这一问题,作者提出了一种新的混合果蝇算法。该算法采用Lozi's映射代替Logistic映射进行全局寻优。以该值为中心进行微小波动,得到二次优化的最终最优值,改进了LGM-FOA的初值选择方法。通过向量机回归预测与原有果蝇算法、粒子群优化算法(Particle Swarm Optimization, PSO)、LGM-FOA算法的仿真,结果证明了该混合果蝇算法在收敛精度上具有明显的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mixed Fruit Fly Optimization Algorithm Based on Lozi's Chaotic Mapping
Mixed Fruit Fly Optimization Algorithm LGM-FOA (Logistic Mapping-FOA) is an improved mixed fruit fly algorithm on the basis of the Logistic map, but the algorithm was showing an ideal state about convergence precision and stability in the optimization process, because there are three discontinuous points from the Logistic map. To solve this problem, the author proposed a new mixed fruit fly algorithm. The algorithm uses the Lozi's map to have a global search for the optimal parameter values instead of Logistic map. It uses the value as the center to do tiny fluctuations to obtain Final optimal value of quadratic optimization, and improves the initial value selection method of LGM-FOA. In support of the simulation between vector machine regression forecast and the original Fruit Fly Algorithm, Particle Swarm Optimization (PSO), LGM-FOA, the result testifies that the convergence accuracy of this new mixed fruit fly algorithm has obvious advantages.
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