约束函数优化的改进NSGA-II算法

Q1 Social Sciences HumanMachine Communication Journal Pub Date : 2010-04-24 DOI:10.1109/MVHI.2010.209
Maocai Wang, Guangming Dai, Hanping Hu
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引用次数: 11

摘要

约束函数的优化一直是多目标优化问题中的一个研究热点。基于NSGA-II中的非支配排序、精英策略和小生境技术,提出了一种改进的NSGA-II约束函数优化算法。在改进算法中,建立了偏序关系和柯西分布的交叉运算。然后根据偏序关系对个体进行排序,生成非支配个体。为了提高进化的能力,采用柯西分布的交叉操作,使部分个体在同一代内进化。此外,每一代生成的非劣势个体被归档到Pareto集合滤波器中,以保留进化过程中生成的所有具有良好特征的个体。最后,使用一些基准函数来测试算法的性能。测试结果表明了该算法的有效性和有效性。
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Improved NSGA-II Algorithm for Optimization of Constrained Functions
Optimization of Constrained Functions have been a research focus in multi-objective optimization problems (MOP). Based on the technologies from NSGA-II such as non-dominated sorting, elitist strategy and niche technique, this paper proposes an improved NSGA-II algorithm for Optimization of Constrained Functions. In the improved algorithm, a partial order relation and the crossover operate by Cauchy Distribution is set up. Then according to the partial order relation, the individuals are sorted for generating the non-dominated individuals. Moreover, to enhance the evolution’s ability, some individuals are evolved in the same generation and the crossover operate by Cauchy Distribution is adopted. In addition, non-dominated individuals generated in each generation are archived to Pareto set filter to reserve all individuals with good characteristic generated in the evolving process. Finally, some Benchmark functions are used to test the algorithm performance. Test result shows the availability and the efficiency of the algorithm.
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来源期刊
CiteScore
10.00
自引率
0.00%
发文量
10
审稿时长
8 weeks
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