首页> 外文会议>2012 IEEE Fifth International Conference on Advanced Computational Intelligence. >Enhancing multi-objective Invasive Weed Optimization with information exchange in Intra- and Inter-Communities
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Enhancing multi-objective Invasive Weed Optimization with information exchange in Intra- and Inter-Communities

机译:通过社区内和社区间的信息交换增强多目标侵入性杂草优化

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Inspired from colonizing weeds, a simple but effective multi-objective optimization algorithm, named as Multi-objective Invasive Weed Optimization (IWO_MO), has been proposed recently and proved to be superior to other state-of-the-art algorithms. In this paper, we propose the Intra-and Inter-operator, which exchanges information among the Intra- and Inter-Communities of weeds, to further improve the performance of the IWO_MO. The proposed algorithm, named as IWO_MO2, is tested on various multi-objective benchmark test functions. Results suggest that the proposed IWO_MO2 is more effective on tackling multi-objective problems and the obtained Pareto approximative Front is very close to the true Pareto optimal Front.
机译:受殖民化杂草的启发,最近提出了一种简单而有效的多目标优化算法,即多目标侵入性杂草优化(IWO_MO),并被证明优于其他最新算法。在本文中,我们提出了内部和内部操作员,以在杂草内部和社区之间交换信息,以进一步提高IWO_MO的性能。该算法名为IWO_MO2,已在各种多目标基准测试功能上进行了测试。结果表明,提出的IWO_MO2在解决多目标问题上更有效,并且获得的帕累托近似前沿与真实的帕累托最优前沿非常接近。

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