CFO Algorithm Using Niche and Opposition-Based Learning

Min Li, Fei Liang, Jie Liu
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引用次数: 0

Abstract

The Central Force Optimization (CFO) algorithm is a new multi-dimensional search-determined heuristic optimization algorithm. The results obtained by using CFO algorithm are unstable and easy to fall into local optimum. To solve this shortcoming, we propose a new algorithm for central gravity optimization using Niche and Opposition-Based Learning. Based on the extension theory, the algorithm model is constructed. The niche is divided into groups, we settled shared area for these groups. The adaptive sharing of the particles in the shared area can effectively prevent the algorithm from prematurely converging and enhance the global search ability. The optimal particle is introduced into the elite reverse learning strategy to enhance the development of the solution space and improve the accuracy of the algorithm. The performance of the algorithm is evaluated by the test function, and the results show that the optimization performance of the algorithm is significantly improved.
基于小生境和对立学习的CFO算法
中心力优化算法是一种新的多维搜索确定启发式优化算法。CFO算法求解结果不稳定,容易陷入局部最优。为了解决这一问题,我们提出了一种新的基于小生境和基于对立学习的重心优化算法。基于可拓理论,构建了算法模型。生态位被划分成不同的组,我们为这些组设置了共享区域。共享区域内粒子的自适应共享可以有效防止算法过早收敛,增强全局搜索能力。在精英逆向学习策略中引入最优粒子,增强了解空间的拓展性,提高了算法的精度。通过测试函数对算法的性能进行评价,结果表明该算法的优化性能得到了显著提高。
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