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Improved Harris's Hawk Multi-objective Optimizer Using Two-steps Initial Population Generation Method

机译:两步初始种群生成方法的改进Harris's Hawk多目标优化器

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The population of hawks in the Harris's hawk multi-objective optimizer (HHMO) algorithm is generated using uniform distribution random number. This method does not guarantee that the solutions can be evenly distributed in the search space of the problem, which may affect the efficiency of the algorithm. Therefore, to improve the performance of HHMO algorithm, two-steps initial population generation method is proposed. This method is developed based on R-sequence and partial opposition-based learning, which is employed to generate an initial population of hawks, with the aim to achieve better initial population. Thus better convergence toward Pareto front will be obtained. The performance of the proposed improved HHMO algorithm is evaluated using a set of well-known multi-objective optimization problems. The results of numerical simulation experiment demonstrate the effectiveness of the proposed two-step initial population generation method and showed superiority of the improved HHMO algorithm compares to the HHMO. The improved HHMO can be used to improve the convergence towards the true Pareto frontier.
机译:哈里斯鹰派多目标优化器(HHMO)算法中的鹰派数量是使用均匀分布随机数生成的。这种方法不能保证解决方案可以均匀地分布在问题的搜索空间中,这可能会影响算法的效率。因此,为提高HHMO算法的性能,提出了两步初始种群生成方法。该方法是基于R序列和基于部分对立的学习而开发的,该方法用于生成初始鹰群,目的是实现更好的初始种群。因此,将获得朝向帕累托前沿的更好收敛。使用一组众所周知的多目标优化问题来评估所提出的改进的HHMO算法的性能。数值模拟实验的结果证明了所提出的两步初始种群生成方法的有效性,并且表明改进的HHMO算法与HHMO相比具有优越性。改进的HHMO可用于改善向真正帕累托边界的收敛。

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