155
Views
10
CrossRef citations to date
0
Altmetric
Original Articles

A weight-based multiobjective immune algorithm: WBMOIA

, &
Pages 719-745 | Received 03 May 2009, Accepted 25 Sep 2009, Published online: 29 Mar 2010

References

  • Aguirre , A. H. 2004 . Handling constraints using multiobjective optimization concepts . International Journal of Numerical Methods in Engineering , 59 : 1989 – 2017 .
  • Binh , T. T. and Korn , U. MOBES: a multiobjective evolution strategy for constrained optimization problems . Proceedings of the third international conference on genetic algorithms (Mendel’97) . June 25–27 1997 , Brno, Czech Republic. Edited by: Bäck , T. pp. 176 – 182 .
  • Coello Coello , C. A. and Cruz Cortés , N. An approach to solve multiobjective optimization problems based on an artificial immune system . First International conference on artificial immune systems (ICARIS 2002) . 2002 , Canterbury, England. Edited by: Timmis , J. and Bentley , P. J. pp. 212 – 221 . University of Kent
  • Coello Coello , C. A. , Lamont , G. B. and Van Veldhuizen , D. A. 2008 . Evolutionary algorithms for solving multi-objective problems , 2 , New York : Springer Science .
  • Coello Coello , C. A. , Toscano Pulido , G. and Salazar Lechuga , M. 2004 . Handling multiple objectives with particle swarm optimization . IEEE Transactions on Evolutionary Computation , 8 : 256 – 279 .
  • Deb , K. 1999 . Multi-objective genetic algorithms: problem difficulties and construction of test problems . Evolutionary Computation , 7 : 205 – 230 .
  • Deb , K. 2001 . Multi-objective optimization using evolutionary algorithms , New York : Wiley .
  • Deb , K. 2002 . A fast and elitist multiobjective genetic algorithm: NSGA-II . IEEE Transactions on Evolutionary Computation , 6 ( 2 ) : 182 – 197 .
  • de Castro , L. N. and Timmis , J. An artificial immune network for multimodal function optimization . Proceedings of the 2002 congress on evolutionary computation (CEC02) . May 12–17 2002 , Honolulu, Hawaii. Vol. 1 , pp. 699 – 704 . Piscataway, NJ : IEEE Press .
  • de Castro , L. N. and Timmis , J. 2002 . Artifical immune system: a new computational intelligence approach , Heidelberg : Springer-Verlag .
  • Freschi , F. and Repetto , M. 2006 . VIS: an artificial immune network for multi-objective optimization . Engineering Optimization , 38 ( 8 ) : 975 – 996 .
  • Gao , J. Q. and Fang , L. A novel artificial immune system for multiobjective optimization problems . Proceedings of the sixth international symposium on neural networks (ISNN 2009) . May 26–29 2009 , Wuhan, PRC. Edited by: Wang , H. , Shen , Y. and Huang , T. pp. 88 – 97 . Berlin : Springer-Verlag . Lecture notes in computer science Vol. 5553
  • Gao , J. Q. and Wang , J. 2010 . WBMOAIS: a novel artificial immune system for multiobjective optimization . Computers and Operations Research , 37 ( 1 ) : 50 – 61 .
  • Hart , E. and Timmis , J. 2008 . Application areas of AIS: the past, the present and the future . Applied Soft Computing , 3 : 191 – 201 .
  • Ishibuchi , H. and Murata , T. 1998 . A multi-objective genetic local search algorithm and its application to flowshop scheduling . IEEE Transactions on Systems, Man, and Cybernetics – Part C: Applications and Reviews , 28 ( 3 ) : 392 – 403 .
  • Jiao , L. Clonal selection with immune dominance and energy based multiobjective optimization . Proceedings of the 3rd international conference on evolutionary multi-criterion optimization (EMO 2005) . March 9–11 2005 , Guanajuato, Mexico. pp. 474 – 489 . Berlin : Springer-Verlag . Lecture notes in computer science Vol. 3410
  • Kita , H. , Yabumoto , Y. , Mori , N. and Nishikawa , Y. 1996 . “ Multi-objective optimization by means of the thermodynamical genetic algorithm ” . In Parallel problem solving from nature (CPPSN IV) , Edited by: Voigt , H. M. and Ebeling , W. 504 – 512 . Berlin : Springer-Verlag . Lecture notes in computer science Vol. 1141
  • Lu , H. and Yen , G. G. 2003 . Rank-density-based multiobjective genetic algorithm and benchmark test function study . IEEE Transactions on Evolutionary Computation , 7 : 325 – 343 .
  • Luh , G. C. , Chueh , C. H. and Liu , W. W. 2003 . MOIA: multi-objective immune algorithm . Engineering Optimization , 35 ( 2 ) : 143 – 164 .
  • Luh , G. C. , Chueh , C. H. and Liu , W. W. 2004 . Multi-objective optimal design of truss structure with immune algorithm . Computers and Structures , 82 : 829 – 844 .
  • Osyczka , A. and Kundu , S. 1995 . A new method to solve generalized multicriteria optimization problems using the simple genetic algorithm . Structural Optimization , 10 : 94 – 99 .
  • Schott , J. R. 1995 . “ Fault tolerant design using single and multi-criteria genetic algorithms ” . Boston, MA : Department of Aeronautics and Astronautics, Massachusetts Institute of Technology . Thesis (Master's)
  • Veldhuizen , D. V. 1999 . “ Multiobjective evolutionary algorithms: classifications, analyses and new innovations ” . Dayton, OH : Air Force Institute of Technology . Thesis (PhD)
  • Viennet , R. 1996 . Multicriteria optimization using a genetic algorithm for determining the Pareto set . International Journal of Systems Science , 27 ( 2 ) : 255 – 260 .
  • Wang , X. L. and Mahfouf , M. ACSAMO: an adaptive multiobjective optimization algorithm using the clonal selection principle . Proceedings of the 2nd European symposium on nature-inspired smart information systems . 29 November–1 December 2006 , Puerto de la Cruz, Tenerife, Spain.
  • Yoo , J. and Hajela , P. 1999 . Immune network simulations in multicriterion design . Structural Optimization , 18 ( 2-3 ) : 85 – 94 .
  • Zhang , Z. H. 2008 . Multiobjective optimization immune algorithm in dynamic environments and its application to greenhouse control . Applied Soft Computing , 8 : 959 – 971 .
  • Zhang , X. , Lu , B. , Gou , S. and Jiao , L. Immune multiobjective optimization algorithm for unsupervised feature selection . Proceedings of applications of evolutionary computing . Budapest, Hungary. pp. 484 – 494 . Springer-Verlag . Lecture notes in computer science Vol. 3907
  • Zitzler , E. , Deb , K. and Thiele , L. 2000 . Comparison of multiobjective evolutionary algorithms: empirical results . Evolutionary Computation , 8 ( 2 ) : 125 – 148 .

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.