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ASMiGA: An Archive-Based Steady-State Micro Genetic Algorithm

机译:ASMiGA:基于存档的稳态微遗传算法

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We propose a new archive-based steady-state micro genetic algorithm (ASMiGA). In this context, a new archive maintenance strategy is proposed, which maintains a set of nondominated solutions in the archive unless the archive size falls below a minimum allowable size. It makes the archive size adaptive and dynamic. We have proposed a new environmental selection strategy and a new mating selection strategy. The environmental selection strategy reduces the exploration in less probable objective spaces. The mating selection increases searching in more probable search regions by enhancing the exploitation of existing solutions. A new crossover strategy DE-3 is proposed here. ASMiGA is compared with five well-known multiobjective optimization algorithms of different types—generational evolutionary algorithms (SPEA2 and NSGA-II), archive-based hybrid scatter search, decomposition-based evolutionary approach, and archive-based micro genetic algorithm. For comparison purposes, four performance measures (HV, GD, IGD, and GS) are used on 33 test problems, of which seven problems are constrained. The proposed algorithm outperforms the other five algorithms.
机译:我们提出了一种新的基于存档的稳态微遗传算法(ASMiGA)。在这种情况下,提出了一种新的存档维护策略,该策略将在存档中维护一组非主导解决方案,除非存档大小降至最小允许大小以下。它使档案大小具有自适应性和动态性。我们提出了一种新的环境选择策略和新的交配选择策略。环境选择策略减少了在不太可能的目标空间中进行探索的可能性。匹配选择通过增强对现有解决方案的利用来增加在更可能的搜索区域中的搜索。这里提出了一种新的交叉策略DE-3。将ASMiGA与五种不同类型的著名多目标优化算法进行比较-世代进化算法(SPEA2和NSGA-II),基于档案的混合散点搜索,基于分解的进化方法和基于档案的微遗传算法。为了进行比较,针对33个测试问题使用了四个性能度量(HV,GD,IGD和GS),其中七个问题受到约束。提出的算法优于其他五种算法。

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