An Improved Nondominated Sorting Algorithm

A. R. Cruz
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Abstract

This paper presents a new procedure for the nondominated sorting with constraint handling to be used in a multiobjective evolutionary algorithm. The strategy uses a sorting algorithm and binary search to classify the solutions in the correct level of the Pareto front. In a problem with objective functions, using solutions in the population, the original nondominated sorting algorithm, used by NSGA-II, has always a computational cost of in a naA¯ve implementation. The complexity of the new algorithm can vary from in the best case and in the worst case. A experiment was executed in order to compare the new algorithm with the original and another improved version of the Deb’s algorithm. Results reveal that the new strategy is much better than other versions when there are many levels in Pareto front. It is also concluded that is interesting to alternate the new algorithm and the improved Deb’s version during the evolution of the evolutionary algorithm.
一种改进的非支配排序算法
本文提出了一种用于多目标进化算法的带约束处理的非支配排序新方法。该策略使用排序算法和二分搜索对帕累托前沿正确层次上的解进行分类。对于目标函数问题,在种群中使用解,NSGA-II使用的原始非支配排序算法在初始实现中总是具有计算成本。新算法的复杂度在最好的情况和最坏的情况下可能有所不同。为了将新算法与原始算法和deb算法的另一个改进版本进行比较,进行了实验。结果表明,当帕累托前方有多个关卡时,新策略明显优于其他版本。在进化算法的进化过程中,新算法和改进的deb版本交替使用是有趣的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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