动态模因柯西突变的多目标免疫算法

Yanli Yang, Hanbing Fang
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引用次数: 2

摘要

提出了一种基于动态模因柯西突变(DMCMIA)的多目标优化免疫算法。将模因论思想引入突变过程,提出了动态模因柯西突变算子。DMCM算子将全局搜索和局部搜索有效地结合起来,采用了一种与生成相关的参数,保证了全局搜索和局部搜索的良好平衡。在求解5个ZDT和5个DTLZ标准测试问题时,与另一种多目标优化算法NNIA进行了比较。基于两集覆盖、收敛度量和间隔的仿真结果表明,DMCMIA在生成真实Pareto前沿逼近方面优于NNIA。通过与多项式突变和高斯突变的比较,验证了动态模因柯西突变的有效性,实验结果强化了DMCM算子的优势。
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Multi-objective immune algorithm with dynamic memetic Cauchy mutation
In this paper, a novel immune algorithm with dynamic memetic Cauchy mutation (DMCMIA) for multi-objective optimization is proposed. The idea of memetics is incorporated into the mutation process and a dynamic memetic Cauchy mutation (DMCM) operator is developed. The DMCM operator combines global exploration and local refinement efficiently, which adopts a generation-dependent parameter to guarantee a good balance between global search and local search. Comparison is made to another multi-objective optimization algorithm, nondominated neighbor immune algorithm, termed as NNIA, in solving five ZDT and five DTLZ standard test problems. Simulation results based on coverage of two set, convergence metric and spacing show that DMCMIA performs better than NNIA in generating approximations to the true Pareto front. In addition, the effectiveness of the novel dynamic memetic Cauchy mutation is verified by comparison to polynomial mutation and Gaussian mutation, the experimental results reinforce the advantage of the DMCM operator.
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