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AP-NSGA-II: An Evolutionary Multi-objective Optimization Algorithm Using Average-Point-Based NSGA-II

机译:AP-NSGA-II:使用基于平均点的NSGA-II的进化多目标优化算法

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Multi-objective optimization involves optimizing a number of objectives simultaneously, and it becomes challenging when the objectives conflict each other, i.e., the optimal solution of one objective function is different from that of other. These problems give rise to a set of trade-off optimal solutions, popularly known as Pareto-optimal solution. Due to multiplicity in solutions, these problems were proposed to be solved suitably by using evolutionary algorithms which use a population approach in search procedure. So, these types of problems are called evolutionary multi-objective optimization (EMO) for handling multi-objective optimization problems. In this paper, an average-point-based EMO algorithm has been suggested for solving multi-objective optimization problem following NSGA-II mechanism (AP-NSGA-II) that emphasizes population members that are non-dominated. Finally, it has been shown how our two primary goals, convergence to Paretooptimal solution and maintenance of diversity among solutions, have been achieved.
机译:多目标优化涉及同时优化许多目标,并且当目标彼此冲突时,它变得具有挑战性,即一个客观函数的最佳解决方案与其他物体的最佳解决方案不同。这些问题导致一系列权衡最佳解决方案,普遍称为帕累托最优解决方案。由于解决方案中的多重性,提出了通过使用在搜索程序中使用群体方法的进化算法来适当地解决这些问题。因此,这些类型的问题称为进化的多目标优化(EMO),用于处理多目标优化问题。在本文中,已经提出了一种基于平均点的EMO算法来解决非目标机制(AP-NSGA-II)之后强调非主导的人口成员的多目标优化问题。最后,已经展示了我们的两种主要目标,达到普遍解决方案和解决方案之间的多样性的汇聚。

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