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An Empirical Study of Aggregation Operators with Pareto Dominance in Multiobjective Genetic Algorithm

机译:多目标遗传算法中具有帕累托优势的聚集算子的实证研究

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摘要

Genetic algorithms (GAs) have been widely used in solving multiobjective optimization problems (MOP). The foremost hindrance limiting strength of GA is the large number of nondominated solutions and the computational complexity involved in selecting a preferential candidate among the set of nondominated solutions. In this paper, we analyze the approach of applying aggregation operator in place of density-based indicator mechanism in cases where Pareto dominance method fails to decide the preferential solution. We also propose a new aggregation function () and compare the results obtained with prevailing aggregation functions suggested in the literature. We demonstrate that the proposed method is computationally less expensive with overall complexity of . To show the efficacy and consistency of the proposed method, we applied it on different, two- and three-objective benchmark functions. Results indicate a good convergence rate along with a near-perfect diverse approximation set.
机译:遗传算法(GA)已广泛用于解决多目标优化问题(MOP)。 GA的最大障碍限制强度是大量非支配解以及在非支配解集合中选择优先候选者所涉及的计算复杂性。在本文中,我们分析了在帕累托优势方法无法确定优先解决方案的情况下,应用聚集算子代替基于密度的指标机制的方法。我们还提出了一个新的聚合函数(),并将获得的结果与文献中建议的主流聚合函数进行比较。我们证明了所提出的方法的计算成本较低,总体复杂度为。为了证明所提方法的有效性和一致性,我们将其应用于不同的,两个和三个目标的基准函数。结果表明良好的收敛速度以及接近完美的多样近似集。

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