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A novel constraint-handling technique based on dynamic weights for constrained optimization problems

机译:一种基于受约束优化问题的动态权重的新型约束处理技术

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摘要

Bi-objective constraint-handling technique may be one of the most promising constraint techniques for constrained optimization problems. It regards the constraints as an extra objective and using Pareto ranking as selection operator. These algorithms achieve a good convergence by utilizing potential infeasible individuals, but not be good at maintaining the diversity of the population. It is significant to balance the diversity of the population and the convergence of the algorithm. This paper proposes a novel constraint-handling technique based on biased dynamic weights for constrained evolutionary algorithm. The biased weights are used to select different individuals with low objective values and low degree of constraint violations. Furthermore, along with the evolution, more emphasis is placed on the individuals with lower objective values and lower degree of constraint violations by adjusting the biased weights dynamically, which forces the search to a promising feasible region. Thus, the proposed algorithm can keep a good balance between the convergence and the diversity of the population. Moreover, we compared the proposed algorithm with other state-of-the-art algorithms on 42 benchmark problems. The experimental results showed the reliability and stabilization of the proposed algorithm.
机译:双目标约束处理技术可以是受约束优化问题的最有希望的约束技术之一。它将约束视为额外的目标并使用帕累托排名为选择运营商。这些算法通过利用潜在的不可行的个体来实现良好的收敛,但不擅长维持人口的多样性。平衡人口的多样性和算法的收敛性很重要。本文提出了一种基于偏置动态权重的新型约束处理技术,用于约束进化算法。偏置重量用于选择具有低目标值和低约束程度的不同个体。此外,随着演进,通过动态调节偏置重量,将更多的重点放置在具有较低物理值和较低的约束程度违规的个体上,这迫使搜索到有希望的可行区域。因此,所提出的算法可以保持良好的平衡与人口的多样性之间。此外,我们将所提出的算法与42个基准问题的其他最先进的算法进行了比较。实验结果表明,该算法的可靠性和稳定性。

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