期刊文献+

Adaptive Immune Evolutionary Algorithms Based on Immune Network Regulatory Mechanism 被引量:3

Adaptive Immune Evolutionary Algorithms Based on Immune Network Regulatory Mechanism
下载PDF
导出
摘要 Based on immune network regulatory mechanism, a new adaptive immune evolutionary algorithm (AIEA) is proposed to improve the performance of genetic algorithms (GA) in this paper. AIEA adopts novel selection operation according to the stimulation level of each antibody. A memory base for good antibodies is devised simultaneously to raise the convergent rapidity of the algorithm and adaptive adjusting strategy of antibody population is used for preventing the loss of the population adversity. The experiments show AIEA has better convergence performance than standard genetic algorithm and is capable of maintaining the adversity of the population and solving function optimization problems in an efficient and reliable way. Based on immune network regulatory mechanism, a new adaptive immune evolutionary algorithm (AIEA) is proposed to improve the performance of genetic algorithms (GA) in this paper. AIEA adopts novel selection operation according to the stimulation level of each antibody. A memory base for good antibodies is devised simultaneously to raise the convergent rapidity of the algorithm and adaptive adjusting strategy of antibody population is used for preventing the loss of the population adversity. The experiments show AIEA has better convergence performance than standard genetic algorithm and is capable of maintaining the adversity of the population and solving function optimization problems in an efficient and reliable way.
作者 何宏 钱锋
出处 《Journal of Donghua University(English Edition)》 EI CAS 2007年第1期141-145,共5页 东华大学学报(英文版)
基金 National Science Funds for Distinguished Young Scholars ( No60625302) Major state Basic Research Program ofChina (973Program) (No2002CB312200) the 863 Hi-Tech Research and Development Programof China (No20060104Z1081) Science and Research Program of Shanghai Educational Committee (No06DZ030)
关键词 evolutionary algorithm immune network ADAPTATION stimulation level. 自适应免疫进化算法 免疫网络 调节机制 刺激水平
  • 相关文献

参考文献3

二级参考文献9

  • 1Toyoo Fukuda, Kazuyuki Mori, Makoto Tsukiyama.Parallel search for multi-modal funetion optimization with diversity and learning of immune algorithm[Al.Artificial Immune Systems and Their Applications[C ].Springer, 1998 : 210-220.
  • 2Digalakis J G, Margaritis K G. An experimental study of benehmarking functions for Genetic Algorithms[A].2000 IEEE Int Conf on Systems, Man and Cybernetics[C]. Nashville ,2000; 3810-3815.
  • 3Goldberg D E.Genetic Algorithms in Search [A].Optimization and Machine Learning.Reading,MA:Addison-Wesley Publishing Company,1989.
  • 4Castro L N de,Timmis J I.Artificial Immune Systems:a New Computational Intelligence Approach [M].Springer-Verlag,London,September,2002,231-240.
  • 5Bak P,Tang C,Wiesenfeld K.Self-Organized Criticality [J].Physical Review A.38:364-374,1988.
  • 6Krink T,Rickers P,Thomsen R.Applying Self-Organized Criticality to Evolutionary Algorithms [A],Parallel Problem Solving from Nature-PPSN VI 6th International Conference.2000,375-384.
  • 7Krink T,Thomsen R.Self-Organized Criticality and Mass Extinction in Evolutionary Algorithms [A].Proceedings of the 2001 Congress on Evolutionary Computation.2001,1155-1161.
  • 8曹先彬,刘克胜,王煦法.基于免疫进化规划的多层前馈网络设计[J].软件学报,1999,10(11):1180-1184. 被引量:18
  • 9郑日荣,毛宗源,罗欣贤.改进人工免疫算法的分析研究[J].计算机工程与应用,2003,39(34):35-37. 被引量:27

共引文献35

同被引文献5

引证文献3

二级引证文献3

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部