期刊文献+

Immune Genetic Algorithm for Optimal Design 被引量:2

Immune Genetic Algorithm for Optimal Design
下载PDF
导出
摘要 A computing model employing the immune and genetic algorithm (IGA) for the optimization of part design is presented. This model operates on a population of points in search space simultaneously, not on just one point. It uses the objective function itself, not derivative or any other additional information and guarantees the fast convergence toward the global optimum. This method avoids some weak points in genetic algorithm, such as inefficient to some local searching problems and its convergence is too early. Based on this model, an optimal design support system (IGBODS) is developed.IGBODS has been used in practice and the result shows that this model has great advantage than traditional one and promises good application in optimal design. A computing model employing the immune and genetic algorithm (IGA) for the optimization of part design is presented. This model operates on a population of points in search space simultaneously, not on just one point. It uses the objective function itself, not derivative or any other additional information and guarantees the fast convergence toward the global optimum. This method avoids some weak points in genetic algorithm, such as inefficient to some local searching problems and its convergence is too early. Based on this model, an optimal design support system (IGBODS) is developed. IGBODS has been used in practice and the result shows that this model has great advantage than traditional one and promises good application in optimal design.
出处 《Journal of Donghua University(English Edition)》 EI CAS 2002年第4期16-19,共4页 东华大学学报(英文版)
基金 Shanghai Natural Science Foundation(01ZF14004)
关键词 automation artificial IMMUNE system (AIS) Optimal design EVOLUTIONARY algorithm GENETIC ALGORITHM automation, artificial immune system (AIS), Optimal design, evolutionary algorithm, genetic algorithm
  • 相关文献

参考文献7

  • 1Dasgupta D,Attoh-Okine N.Immunity-based Systems:A survey[].Proc IEEE International Conference on SystemsMan and Cybernetics.1997
  • 2Hunt J E,Cooke D E.Learning using an artificial immune system[].Journal of Network and Computer Applications.1996
  • 3S. Forrest,B. Javornik,R. E. Smith,A. S. Perelson.Using genetic algorithms to explorepattern recognition in the immune system[].Evolutionary Computation.1993
  • 4J Hunt,D Cooke.An adaptative, distributed learning system, based on immune system[].Proceedings of the IEEE International Conference on Systems.1995
  • 5Farmer J. D,Packard NH,Pereison AS.The immune system adaptation and machine learning[].Physica.1986
  • 6Jeme N. K.Towards a Network Theory of the Immune System[].Annual Review of Immunology.1974
  • 7Kurapati A,Azarm S.Immune network simulation with multi-objective genetic algorithms for multidisciplinary design optimization[]..2000

同被引文献23

  • 1LLOYD SP, WITSENHAUSEN HS. Weapons allocation is NP-complete[ A]. Proc. of the 1986 Summer Conference on Simulation[ C].Reno: NV, 1986.
  • 2DENBROADER GG, ELLISON JRE, EMERLING L. On optimum target assignments[J], Operations Research, 1958, (7): 322-326.
  • 3DAY RH. Allocating weapons to target complexes by means of nonlinear programming[ J]. Operations Research, 1966, (14-) : 992 -1013.
  • 4KATI'ER JD. A solution of the muhi-weapon, multi-target assignment problem[ R]. MITRE. Working paper 26957, 1986.
  • 5MURPHEY RA. Target-based weapon target assignment problems[ A]. Nonlinear Assignment Problems: Algorithms and Applications[C]. PARDALOS PM, PITSOULIS LS. ed. Kluwer Academic Publishers, 1999. 39-53.
  • 6LEE Z-J, LEE C-Y, SU S-F. An immunity-based ant colony optimization algorithm for solving weapon-target assignment problem[ J].Applied Soft Computing Journal. 2002, 2(1) : 39 -47.
  • 7WACHOLDER E. A neural network-based optimization algorithm for the static weapon-target assignment problem[ J]. ORSA Journal on Computing, 1989, (4) : 232 -246.
  • 8LI M, WANG H, LIP. Tasks Mapping in Multi-core based system:hybrid ACO&GA Approach[ DB/OL]. http://ieeexplore. ieee. org/ie15/8985/28526/01277556. pdf, 2003-10-21/2004 -03-16.
  • 9CHENG X, HOU Y-B. A study of genetic ant routing algorithm[ DB/OL]. http://ieeexplore. ieee. org/Xplore/Toclogin. jsp? url=/ie15/8907/28159/01259839. pdf 2003-11-05/2004-03-16.
  • 10DOR1GO M, MANIEZZO V, COLORNI A. The Ant System: Optimization by a Colony of Cooperating Agents[ J]. IEEE Transactionson Systems, Man, and Cybernetics-Part B, 1996, 26(1) : 29 -41.

引证文献2

二级引证文献18

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