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A novel evolutionary root system growth algorithm for solving multi-objective optimization problems

机译:一种解决多目标优化问题的新型进化根系生长算法

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This paper proposes a novel multi-objective root system growth optimizer (MORSGO) for the copper strip burdening optimization. The MORSGO aims to handle multi-objective problems with satisfactory convergence and diversity via implementing adaptive root growth operators with a pool of multi objective search rules and strategies. Specifically, the single-objective root growth operators including branching, regrowing and auxin-based tropisms are deliberately designed. They have merits of appropriately balancing exploring & exploiting and self-adaptively varying population size to reduce redundant computation. The effective multi-objective strategies including the fast non-dominated sorting and the farthest-candidate selection are developed for saving and retrieving the Pareto optimal solutions with remarkable approximation as well as uniform spread of Pareto-optimal solutions. With comprehensive evaluation against a suit of benchmark functions, the MORSGO is verified experimentally to be superior or at least comparable to its competitors in terms of the IGD and HV metrics. The MORSGO is then validated to solve the real-world copper strip burdening optimization with different elements. Computation results verifies the potential and effectiveness of the MORSGO to resolve complex industrial process optimization. (C) 2017 Elsevier B.V. All rights reserved.
机译:本文提出了一种用于铜带负荷优化的新型多目标根系生长优化器(Morsgo)。 Morsgo旨在通过实施具有多目标搜索规则和策略池的自适应根生长运营商来处理多目标问题。具体而言,单目标根生长算子包括分支,重新制作和基于养蛋白的覆革主义。它们具有适当平衡探索和利用和自适应变化的人口大小的优点,以减少冗余计算。开发了有效的多目标策略,包括快速非主导的排序和最远的候选选择,用于节省和检索帕累托最佳解决方案,具有显着的近似以及普通最佳解决方案的均匀扩散。通过综合评估基准函数的套装,Morsgo在通过IGD和HV指标方面通过实验验证或至少与其竞争对手相媲美。然后验证Morsgo以解决与不同元素的真实铜带负担优化。计算结果验证了Morsgo解决复杂工业过程优化的潜力和有效性。 (c)2017 Elsevier B.v.保留所有权利。

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