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A modified PSO with a dynamically varying population and its application to the multi-objective optimal design of alloy steels

机译:种群动态变化的改进粒子群优化算法及其在合金钢多目标优化设计中的应用

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In this paper, a new mechanism for dynamically varying the population size is proposed based on a previously modified PSO algorithm (nPSO). This new algorithm is extended to the multi-objective optimisation case by applying the Random Weighted Aggregation (RWA) technique and by maintaining an archive for preserving the suitable Pareto-optimal solutions. Both the single objective and multi-objective optimisation algorithms were tested using well-known benchmark problems. The results show that the proposed algorithms outperform some of the other salient Evolutionary Algorithms (EAs). The proposed algorithms were further applied successfully to the optimal design problem of alloy steels, which aims at determining the optimal heat treatment regime and the required weight percentages for chemical composites to obtain the desired mechanical properties of steel hence minimising production costs and achieving the overarching aim of dasiaright-first-time productionpsila of metals.
机译:在本文中,基于先前修改的PSO算法(nPSO),提出了一种动态改变种群大小的新机制。通过应用随机加权聚合(RWA)技术并通过保留用于保留适当的Pareto最优解的档案,此新算法扩展到了多目标优化情况。使用众所周知的基准问题测试了单目标和多目标优化算法。结果表明,所提出的算法优于其他一些显着的进化算法(EAs)。所提出的算法进一步成功地应用于合金钢的最佳设计问题,旨在确定最佳热处理方案和化学复合材料所需的重量百分比,以获得所需的钢力学性能,从而最大程度地降低生产成本并达到总体目标dasiaright首次金属生产量。

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