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Population extremal optimisation for discrete multi-objective optimisation problems

机译:离散多目标优化问题的总体极值优化

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摘要

The power to solve intractable optimisation problems is often found through population based evolutionary methods. These include, but are not limited to, genetic algorithms, particle swarm optimisation, differential evolution and ant colony optimisation. While showing much promise as an effective optimiser, extremal optimisation uses only a single solution in its canonical form - and there are no standard population mechanics. In this paper, two population models for extremal optimisation are proposed and applied to a multi-objective version of the generalised, assignment problem. These models use novel intervention/interaction strategies as well as collective memory in order to allow individual population members to work together. Additionally, a general non-dominated local search algorithm is developed and tested. Overall, the results show that improved attainment surfaces can be produced using population based interactions over not using them. The new EO approach is also shown to be highly competitive with an implementation of NSGA-II. (C) 2016 Elsevier Inc. All rights reserved.
机译:解决棘手的优化问题的能力通常是通过基于种群的进化方法找到的。这些包括但不限于遗传算法,粒子群优化,差异进化和蚁群优化。极值优化虽然显示出作为有效优化器的巨大希望,但仅使用其规范形式的单个解决方案-并且没有标准的总体机制。本文提出了两个用于极值优化的总体模型,并将其应用于广义赋值问题的多目标版本。这些模型使用新颖的干预/互动策略以及集体记忆,以允许个体人群一起工作。另外,开发并测试了通用的非支配的本地搜索算法。总体而言,结果表明,使用基于人群的交互作用比不使用接触面可以产生更好的到达面。通过实施NSGA-II,新的EO方法也显示出高度的竞争力。 (C)2016 Elsevier Inc.保留所有权利。

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