基于多目标对立学习的全信息粒子群优化算法

Ying Gao, Lingxi Peng, Fufang Li, Miao Liu, Waixi Liu
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引用次数: 3

摘要

近年来,人们提出了一些基于Pareto最优概念的粒子群优化算法来解决多目标优化问题。针对多目标优化问题,提出了一种基于对立学习的全知情粒子群排序优化算法。该算法采用偏好排序来代替帕累托优势来识别最佳个体,从而指导搜索过程。与其他多目标粒子群算法不同,群中的粒子只有位置而没有速度,并通过基于对立的学习和偏好排序来更新个体的最佳位置。此外,还考虑了所有个人最佳位置来更新粒子位置。由于该算法不考虑粒子速度,采用全信息和偏好排序,使得算法更加简单有效。该算法在一些著名的基准测试中得到了应用。采用收敛性度量和多样性度量来评价算法的性能。实验结果表明,该算法在基准函数上是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-objective opposition-based learning fully informed particle swarm optimizer with favour ranking
Some particle swarm optimization(PSO) algorithms have been proposed in recent past to tackle the multi-objective optimization problems based on the concept of Pareto optimality. In this paper, we propose a new opposition-based learning fully informed particle swarm optimizer with favour ranking to solve multi-objective optimization problems. Instead of Pareto dominance, favour ranking is used to identify the best individuals in order to guide the search process in the proposed algorithm. Different from other multi-objective PSO, particles in swarm only have position without velocity and the personal best position gets updated using opposition-based learning and favour ranking. Besides, all personal best positions are considered to update particle position. Because of discarding the particle velocity and using full information and favour ranking, the algorithm is the simpler and more effective. The proposed algorithm is applied to some well-known benchmarks. Convergence metric, diversity metric are used to evaluate the performance of the algorithm. The experimental results show that the algorithm is effective on the benchmark functions.
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