484
Views
59
CrossRef citations to date
0
Altmetric
Original Articles

Genetic Programming Evolved through Bi-Objective Genetic Algorithms Applied to a Blast Furnace

, , &
Pages 776-782 | Received 29 Apr 2012, Accepted 26 Nov 2012, Published online: 08 Jul 2013

REFERENCES

  • Pettersson , F. ; Chakraborti , N. ; Saxén , H. A genetic algorithms based multi-objective neural net applied to noisy blast furnace data . Appl. Soft Comput. 2007 , 7 , 387 – 397 .
  • Ling , J. ; Gao , C. ; Xia , Z. A Sliding-window smooth support vector regression model for nonlinear blast furnace system . Steel Res. Int. 2011 , 82 , 169 – 179 .
  • Mitra , T. ; Helle , M. ; Pettersson , F. ; Saxén , H. ; Chakraborti , N. Multiobjective optimization of top gas recycling conditions in the blast furnace by genetic algorithms . Mater. Manuf. Process. 2011 , 26 , 475 – 480 .
  • Pettersson , F. ; Biswas , A. ; Sen , P. ; Saxén , H. ; Chakraborti , N. Analyzing leaching data for low-grade manganese ore using neural nets and multiobjective genetic algorithms . Mater. Manuf. Process. 2009 , 24 , 320 – 330 .
  • Mondal , D.N. ; Sarangi , K. ; Pettersson , F. ; Sen , P.K. ; Saxén , H. ; Chakraborti , N. Cu-Zn separation by supported liquid membrane analyzed through multi-objective genetic algorithms . Hydrometallurgy 2011 , 107 , 112 – 123 .
  • Govindan , D. ; Chakraborty , S. ; Chakraborti , N. Analyzing the fluid flow in continuous casting through evolutionary neural nets and multi-objective genetic algorithms . Steel Res. Int. 2010 , 81 , 197 – 203 .
  • Rajak , P. ; Tewary , U. ; Das , S. ; Bhattacharya , B. ; Chakraborti , N. Phases in Zn-coated Fe analyzed through an evolutionary meta-model and multi-objective genetic algorithms . Comp. Mater. Sci. 2011 , 50 , 2502 – 2516 .
  • Kumar , A. ; Chakrabarti , D. ; Chakraborti , N. Data-driven Pareto optimization for microalloyed steels using genetic algorithms . Steel Res. Int. 2012 , 83 , 169 – 174 .
  • Agarwal , A. ; Tewary , U. ; Pettersson , F. ; Das , S. ; Saxén , H. ; Chakraborti , N. Analysing blast furnace data using evolutionary neural network and multiobjective genetic algorithms . Ironmak. Steelmak. 2010 , 37 , 353 – 359 .
  • Mitra , T. ; Helle , M. ; Pettersson , F. ; Chakraborti , N. ; Saxén , H. Multiobjective optimization of top gas recycling conditions in the blast furnace by genetic algorithms . Mater. Manuf. Process. 2011 , 26 , 475 – 480 .
  • Miettinen , K. Nonlinear Multiobjective Optimization ; Kluwer : Boston , 1999 .
  • Collet , P. Genetic programming . In Handbook of Research on Nature Inspired Computing for Economics and Management ; Rennard , J.-P. (ed.), Idea : Hershey , PA , 2007 ; 59 – 73 .
  • Poli , R. ; Langdon , W.B. ; McPhee , N.F. A Field Guide to Genetic Programming. Published via http://lulu.com and freely. Available at http://www.gp-field-guide.org.uk (with contributions by Koza, J.R.), 2008.
  • Mitchell , M. An Introduction to Genetic Algorithms ; Prentice-Hall India : New Delhi , 1998 .
  • Biswas , A.K. Principles of Blast Furnace Ironmaking ; Cootha Publishing House : Brisbane , Australia , 1981 .
  • Helle , M. ; Pettersson , F. ; Chakraborti , N. ; Saxén , H. Modelling noisy blast furnace data using genetic algorithms and neural networks . Steel Res. Int. 2006 , 77 , 75 – 81 .
  • Gramegna , N. ; Della Corte , E. ; Poles , S. Manufacturing process simulation for product design chain optimization . Mater. Manuf. Process. 2011 , 26 , 527 – 533 .
  • Brezocnik , M. ; Buchmeister , B. ; Gusel , L. Evolutionary algorithm approaches to modeling of flow stress . Mater. Manuf. Process. 2011 , 26 , 501 – 507 .
  • Cheung , T. ; Cheung , N. ; Tobar , C.M.T. ; Caram , R.; Garcia, A. An application of a genetic algorithm to optimize purification in the zone refining process . Mater. Manuf. Process. 2011 , 26 , 493 – 500 .
  • Biswas , A. ; Maitre , O. ; Mondal , D.N. ; Das , S.K. ; Sen , P.K. ; Collet , P. ; Chakraborti , N. Data driven multi-objective analysis of manganese leaching from low grade sources using genetic algorithms, genetic programming and other allied strategies . Mater. Manuf. Process. 2011 , 26 , 415 – 430 .
  • Baumes , L. ; Collet , P. Examination of genetic programming paradigm for high-throughput experimentation and heterogeneous catalysis . Comp. Mater. Sci. 2009 , 45 , 27 – 40 .
  • Rajak , P. ; Ghosh , S. ; Bhattacharya , B. ; Chakraborti , N. Pareto-optimal analysis of Zn-coated Fe in the presence of dislocations using genetic algorithms . Comp. Mater. Sci. 2012 , 62 , 266 – 271 .
  • Bleuler , S. ; Brack , M. ; Thiele , L. ; Zitzler , E. Multiobjective genetic programming: Reducing bloat by using SPEA2 . In Congress on Evolutionary Computation (CEC) , Piscataway , NJ , 2001 ; 536 – 543 .

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.