Novel PIO Algorithm with Multiple Selection Strategies for Many-Objective Optimization Problems

Zhihua Cui;Lihong Zhao;Youqian Zeng;Yeqing Ren;Wensheng Zhang;Xiao-Zhi Gao
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引用次数: 6

Abstract

With the increase of problem dimensions, most solutions of existing many-objective optimization algorithms are non-dominant. Therefore, the selection of individuals and the retention of elite individuals are important. Existing algorithms cannot provide sufficient solution precision and guarantee the diversity and convergence of solution sets when solving practical many-objective industrial problems. Thus, this work proposes an improved many-objective pigeon-inspired optimization (ImMAPIO) algorithm with multiple selection strategies to solve many-objective optimization problems. Multiple selection strategies integrating hypervolume, knee point, and vector angles are utilized to increase selection pressure to the true Pareto Front. Thus, the accuracy, convergence, and diversity of solutions are improved. ImMAPIO is applied to the DTLZ and WFG test functions with four to fifteen objectives and compared against NSGA-III, GrEA, MOEA/D, RVEA, and many-objective Pigeon-inspired optimization algorithm. Experimental results indicate the superiority of ImMAPIO on these test functions.
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多目标优化问题的多选择策略PIO算法
随着问题维数的增加,现有多目标优化算法的解大多是非显性的。因此,个体的选择和精英个体的保留是重要的。现有算法在求解实际的多目标工业问题时,不能提供足够的解精度,不能保证解集的多样性和收敛性。因此,本文提出了一种改进的多目标鸽子启发优化(ImMAPIO)算法,该算法采用多选择策略来解决多目标优化问题。多重选择策略整合了超容积、膝点和矢量角度,以增加对真正的帕累托前沿的选择压力。从而提高了解的准确性、收敛性和多样性。将imapio应用于4 - 15个目标的DTLZ和WFG测试函数,并与NSGA-III、GrEA、MOEA/D、RVEA和多目标鸽类优化算法进行比较。实验结果表明了imapio在这些测试功能上的优越性。
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