Sequential Multi-objective Genetic Algorithm

L. Falahiazar, V. Seydi, M. Mirzarezaee
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Abstract

Many of the real-world issues have multiple conflicting objectives that the optimization between contradictory objectives is very difficult. In recent years, the Multi-objective Evolutionary Algorithms (MOEAs) have shown great performance to optimize such problems. So, the development of MOEAs will always lead to the advancement of science. The Non-dominated Sorting Genetic Algorithm II (NSGAII) is considered as one of the most used evolutionary algorithms, and many MOEAs have emerged to resolve NSGAII problems, such as the Sequential Multi-Objective Algorithm (SEQ-MOGA). SEQ-MOGA presents a new survival selection that arranges individuals systematically, and the chromosomes can cover the entire Pareto Front region. In this study, the Archive Sequential Multi-Objective Algorithm (ASMOGA) is proposed to develop and improve SEQ-MOGA. ASMOGA uses the archive technique to save the history of the search procedure, so that the maintenance of the diversity in the decision space is satisfied adequately. To demonstrate the performance of ASMOGA, it is used and compared with several state-of-the-art MOEAs for optimizing benchmark functions and designing the I-Beam problem. The optimization results are evaluated by Performance Metrics such as hypervolume, Generational Distance, Spacing, and the t-test (a statistical test); based on the results, the superiority of the proposed algorithm is identified clearly.
序列多目标遗传算法
现实世界中的许多问题都有多个相互冲突的目标,因此在相互矛盾的目标之间进行优化是非常困难的。近年来,多目标进化算法(MOEAs)在优化此类问题方面表现出了良好的性能。因此,教育部的发展将永远引领科学的进步。非支配排序遗传算法II(NSGAII)被认为是最常用的进化算法之一,已经出现了许多MOEA来解决NSGAII问题,例如序列多目标算法(SEQ-MOGA)。SEQ-MOGA提出了一种新的生存选择,它系统地排列个体,染色体可以覆盖整个Pareto Front区域。本研究提出了归档序列多目标算法(ASMOGA)来开发和改进SEQ-MOGA。ASMOGA使用归档技术来保存搜索过程的历史,从而充分满足决策空间中多样性的维护。为了证明ASMOGA的性能,它被用于优化基准函数和设计I-Beam问题,并与几种最先进的MOEA进行了比较。优化结果通过性能指标进行评估,如超体积、生成距离、间距和t检验(统计检验);在此基础上,明确了该算法的优越性。
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