Multiobjective optimization using an immunodominance and clonal selection inspired algorithm

被引:0
作者
MaoGuo Gong
LiCheng Jiao
WenPing Ma
HaiFeng Du
机构
[1] Xidian University,Key Laboratory of Intelligent Perception and Image Understanding of Ministry of Education of China, Institute of Intelligent Information Processing
[2] Xi’an Jiaotong University,School of Public and Administration
来源
Science in China Series F: Information Sciences | 2008年 / 51卷
关键词
multiobjective optimization; immunodominance; clonal selection; artificial immune systems; evolutionary algorithms;
D O I
暂无
中图分类号
学科分类号
摘要
Based on the mechanisms of immunodominance and clonal selection theory, we propose a new multiobjective optimization algorithm, immune dominance clonal multiobjective algorithm (IDCMA). IDCMA is unique in that its fitness values of current dominated individuals are assigned as the values of a custom distance measure, termed as Ab-Ab affinity, between the dominated individuals and one of the nondominated individuals found so far. According to the values of Ab-Ab affinity, all dominated individuals (antibodies) are divided into two kinds, subdominant antibodies and cryptic antibodies. Moreover, local search only applies to the subdominant antibodies, while the cryptic antibodies are redundant and have no function during local search, but they can become subdominant (active) antibodies during the subsequent evolution. Furthermore, a new immune operation, clonal proliferation is provided to enhance local search. Using the clonal proliferation operation, IDCMA reproduces individuals and selects their improved maturated progenies after local search, so single individuals can exploit their surrounding space effectively and the newcomers yield a broader exploration of the search space. The performan ce comparison of IDCMA with MISA, NSGA-II, SPEA, PAES, NSGA, VEGA, NPGA, and HLGA in solving six well-known multiobjective function optimization problems and nine multiobjective 0/1 knapsack problems shows that IDCMA has a good performance in converging to approximate Pareto-optimal fronts with a good distribution.
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页码:1064 / 1082
页数:18
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共 68 条
[1]  
Fonseca C. M.(1995)An overview of evolutionary algorithms in multiobjective optimization Evol Comp 3 1-16
[2]  
Fleming P. J.(1994)Multiobjective optimization using nondominated sorting in genetic algorithms Evol Comp 2 221-248
[3]  
Srinivas N.(1999)Multiobjective evolutionary algorithms: a comparative case study and the strength pareto approach IEEE Trans Evol Comp 3 257-271
[4]  
Deb K.(2000)Approximating the nondominated front using the Pareto archived evolution strategy Evol Comp 8 149-172
[5]  
Zitzler E.(2002)A fast and elitist multiobjective genetic algorithm: NSGA-II IEEE Trans Evolut Comput 6 182-197
[6]  
Thiele L.(2000)A formal model of an artificial immune system BioSystems 55 151-158
[7]  
Knowles J. D.(2000)The immune system as a model for pattern recognition and classification J American Medical Inform Assoc 7 28-41
[8]  
Corne D. W.(2000)An artificial immune system for data analysis Biosystems 55 143-150
[9]  
Deb K.(2000)A novel genetic algorithm based on immunity IEEE Trans Syst, Man and Cybern, Part A 30 552-561
[10]  
Pratap A.(2002)Learning and optimization using the clonal selection principle IEEE Trans Evol Comp 6 239-251