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Multi-objective particle swarm optimization with random immigrants

机译:随机移民的多目标粒子群优化

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摘要

Complex problems of the current business world need new approaches and new computational algorithms for solution. Majority of the issues need analysis from different angles, and hence, multi-objective solutions are more widely used. One of the recently well-accepted computational algorithms is Multi-objective Particle Swarm Optimization (MOPSO). This is an easily implemented and high time performance nature-inspired approach; however, the best solutions are not found for archiving, solution updating, and fast convergence problems faced in certain cases. This study investigates the previously proposed solutions for creating diversity in using MOPSO and proposes using random immigrants approach. Application of the proposed solution is tested in four different sets using Generational Distance, Spacing, Error Ratio, and Run Time performance measures. The achieved results are statistically tested against mutation-based diversity for all four performance metrics. Advantages of this new approach will support the metaheuristic researchers.
机译:当前商业世界的复杂问题需要新的方法和新的计算算法进行解决方案。大多数问题需要从不同角度分析,因此,多目标解决方案更广泛地使用。最近良好的计算算法之一是多目标粒子群优化(MOPSO)。这是一种易于实现的高时间性能性质灵感的方法;但是,找不到归档,解决方案更新和在某些情况下面临的快速收敛问题的最佳解决方案。本研究调查了先前提出的解决方案,用于使用MOPSO创造多样性,并用随机移民方法提出。使用世代距离,间距,误差比和运行时性能测量,在四个不同的组中测试所提出的解决方案。实现的结果是针对所有四种性能指标的基于突变的多样性进行统计学测试。这种新方法的优势将支持成阵教研究人员。

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