148
Views
11
CrossRef citations to date
0
Altmetric
Original Articles

Evolutionary Surrogate Optimization of an Industrial Sintering Process

Pages 768-775 | Received 24 Sep 2012, Accepted 25 Sep 2012, Published online: 08 Jul 2013

REFERENCES

  • Nain , P.K.S. ; Deb , K. Computationally effective search and optimization procedure using coarse to fine approximations. In Proceedings of the Congress on Evolutionary Computation, Canberra, Australia, 2003; 2081–2088.
  • Bradshaw , P. ; Mizner , G.A. ; Unsworth , K. Calculation of compressible turbulent boundary layers on straight-tapered swept wings . AIAA J. 1976 , 14 , 399 – 400 .
  • Farina , M. A neural network based generalized response surface multiobjective evolutionary algorithms . In Congress on Evolutionary Computation ; IEEE Press : New York , 2002 ; 956 – 961 .
  • Clarke , S.M. ; Griebsch , J.H. ; Simpson , T.W. Analysis of support vector regression for approximation of complex engineering analyses . Journal of Mechanical Design 2005 , 127 , 1077 – 1087 .
  • El-Beltagy , M.A. ; Nair , P.B. ; Keane , A.J. Metamodeling techniques for evolutionary optimization of computationally expensive problems: Promises and limitations. In Proceedings of the Genetic and Evolutionary Computation Conference, Morgan Kaufmann, 1999; 196–203.
  • Ratle , A. Accelerating the convergence of evolutionary algorithms by fitness landscape approximation. In Proceedings of Parallel Problem Solving from Nature, V, Amsterdam, The Netherlands, September 27–30, 1998; 87–96.
  • Powell , M. Radial basis functions for multi-variable interpolation: A review . In Algorithms for Approximation ; Mason , C. ; Cox , M.G. , Eds.; Oxford University Press : Oxford , UK , 1987 .
  • Nakayama , H. ; Arakawa , M. ; Sasaki , R. Simulation-based optimization using computational intelligence . Optimization and Engineering 2002 , 3 , 201 – 214 .
  • Meghabghab , G. Iterative radial basis functions neural networks as metamodels of stochastic simulations of the quality of search engines in the World Wide Web . Information Processing and Management 2001 , 37 , 571 – 591 .
  • Vapnik , V. Statistical Learning Theory ; Wiley : New York , 1998 .
  • Evgeniou , T. ; Pontil , M. ; Poggio , T. Regularization networks and support vector machines . Advances in Computational Mathematics 2000 , 13 , 1 – 5 .
  • Smith , R. ; Dike , B. ; Stegmann , S. Fitness inheritance in genetic algorithms. In Proceedings of ACM Symposiums on Applied Computing, Nashville, TN, February 1995; 345–350.
  • Kim , H.S. ; Cho , S.B. An efficient genetic algorithms with less fitness evaluation by clustering. In Proceedings of IEEE Congress on Evolutionary Computation, Seoul, South Korea, May 27–30, 2001; 887–894.
  • Eby , D. ; Averill , R. ; Punch , W. ; Goodman , E. Evaluation of injection island model GA performance on flywheel design optimization. In Third Conference on Adaptive Computing in Design and Manufacturing, Plymouth, UK, April 1998; 121–136.
  • Rasheed , K. ; Hirsh , H. Informed operators: Speeding up genetic-algorithm based design optimization using reduced models. In Proceedings, Genetic and Evolutionary Computation Conference; Las Vegas, NV, July 8–12, 2000; 628–635.
  • Abboud , K. ; Schoenauer , M. Surrogate deterministic mutation. In Artificial Evolution'01, Le Creusot, France, October 29–31, 2002; 103–115.
  • Anderson , K. ; Hsu , Y. Genetic crossover strategy using an approximation concept . In IEEE Congress on Evolutionary Computation ; Washington , DC , 1999 ; 527 – 533 .
  • Sastry , K. ; Goldberg , D.E. ; Pelikan , M. Don't evaluate, inherit. In Proceedings, Genetic and Evolutionary Computation Conference, San Francisco, CA, July 7–11, 2001; 551–558.
  • Carpenter , W. ; Barthelemy , J.F. Common misconceptions about neural networks as approximators . ASCE Journal of Computing in Civil Engineering 1994 , 8 , 345 – 358 .
  • Shyy , W. ; Tucker , P.K. ; Vaidyanathan , R. Response surface and neural network techniques for rocket engine injector optimization. In AIAA/SAE/ASME/ASEE 35th Joint Propulsion Conference, Los Angeles, CA, June 20–24, 1999; AIAA 99-2455
  • Simpson , T. ; Mauery , T. ; Korte , J. ; Mistree , F. Comparison of response surface and Kriging models for multidiscilinary design optimization. In 7th AIAA/USAF/NASA/ISSMO Symposium on Multidisciplinary Analysis and Optimization, St. Louis, MO, September 2–4, 1998; AIAA 98-4755
  • Jin , Y. ; Sendhoff , B. Reducing fitness evaluations using clustering techniques and neural networks ensembles. In Proceedings, Genetic and Evolutionary Computation Conference, Seattle, WA, June 26–30, 2004; 688–699.
  • Fang , H. ; Rais-Rohani , M. ; Liu , Z. ; Horstemeyer , M.F. A comparative study of metamodeling methods for multiobjective crashworthiness optimization. Computers and Structures 2005, 83, 2121–2136.
  • Li , Y.F. ; Ng , S.H. ; Xie , M. ; Goh , T.N. A systematic comparison of metamodeling techniques for simulation optimization in Decision Support Systems . Appl. Soft Comput. J. 2010 , 10 , 1257 – 1273 .
  • Guedri , M. ; Ghanmi , S. ; Majed , R. ; Bouhaddi , N. Robust tools for prediction of variability and optimization in structural dynamics . Mechanical Systems and Signal Processing 2009 , 23 , 1123 – 1133 .
  • Bouazizi , M.L. ; Ghanmi , S. ; Bouhaddi , N. Multi-objective optimization in dynamics of the structures with nonlinear behavior: Contributions of the metamodels . Finite Elements in Analysis and Design 2009 , 45 , 612 – 623 .
  • Nath , N.K. ; Silva , A.J.D. ; Chakraborti , N. Dynamic process modelling of iron ore sintering . Steel Research 1997 , 68 , 285 – 292 .
  • Muchi , I. ; Higuchi , J. Theoretical analysis of sintering operation . Trans. Iron Steel Inst. Japan 1972 , 12 , 54 – 63 .
  • Cummings , M.J. ; Thurlby , J.A. Developments in modelling and simulation of iron ore sintering . Ironmaking Steelmaking 1990 , 17 , 245 – 254 .
  • Mitterlehner , J. ; Loeffler , G. ; Winter , F. ; Hofbauer , H. ; Schmid , H. ; Zwittag , E. ; Buergler , T.H. ; Pammer , O. ; Stiasny , H. Modeling and simulation of heat front propagation in the iron ore sintering process . ISIJ Int. 2004 , 44 , 11 – 20 .
  • Nath , N.K. ; Mitra , K. Optimization of suction pressure for iron ore sintering by genetic algorithm . Ironmaking Steelmaking 2004 , 31 , 199 – 206 .
  • Nath , N.K. ; Mitra , K. Modeling, control and optimization in ferrous and non-ferrous industry. In MS&T'03 Conf.; Kongoli, F.; Thomas, B.G.; Sawamiphakdi, K., Eds.; TMS-ISS: Chicago, Nov. 2003; 109–124.
  • Mitra , K. ; Nath , N.K. Multiobjective Pareto optimization of two-layer sintering process for different bed heights by genetic algorithm . Steel Grips 2005 , 2 , 358 – 363 .
  • Deb , K. Multi-objective Optimization Using Evolutionary Algorithms ; Wiley : Chichester , UK , 2001 .
  • Fujimoto , M. ; Inazumi , T. ; Sato , K. Development of a new type of feeding method for homogenization of sintering reaction. In Ironmaking Conf. Proceedings, Detroit, MI, 1990; 589–601.
  • Toda , H. ; Senzaki , T. ; Isozaki , S. ; Kato , K. Relationship between heat pattern in sintering bed and sinter properties . Trans. ISIJ 1984 , 24 , 187 – 196 .
  • Nath , N.K. ; Mitra , K. Mathematical Modeling and optimization of two-layer sintering process for sinter quality and fuel efficiency by genetic algorithm two-layer sintering of iron ore . Materials and Manufacturing Processes 2005 , 20 , 335 – 349 .
  • Pettersson , F. , Chakraborti , N. , Saxén , H. A genetic algorithms based multiobjective neural net applied to noisy blast furnace data . Applied Soft Computing 2007 , 7 , 387 – 397 .
  • 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 .
  • Miettinen , K. Nonlinear Multi-objective Optimization ; Kluwer : Boston , 1999 .
  • Agarwal , A. , Tewary , U. , Pettersson , F. , Das , S. , Saxén , H. , Chakraborti , N. Analysing blast furnace data using evolutionary neural network and multiobjective genetic algorithms . Ironmaking and Steelmaking 2010 , 37 , 353 – 359 .
  • Mitra , K. ; Gopinath , R. Multi-objective optimization of an industrial grinding operation using elitist non-dominated sorting genetic algorithm . Chemical Engineering Science 2004 , 59 , 385 – 396 .
  • Deb , K. ; Mitra , K. ; Dewri , R. ; Majumdar , S. Towards a better understanding of the epoxy polymerization process using multi-objective evolutionary computation . Chemical Engineering Science 2004 , 59 , 4261 – 4277 .

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.