136
Views
21
CrossRef citations to date
0
Altmetric
Original Articles

Data-Driven Multiobjective Analysis of Manganese Leaching from Low Grade Sources Using Genetic Algorithms, Genetic Programming, and Other Allied Strategies

, , , , , & show all
Pages 415-430 | Received 02 Jul 2010, Accepted 22 Nov 2010, Published online: 08 Apr 2011

REFERENCES

  • Pettersson , F. ; Biswas , A. ; Sen , P.K. ; 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 .
  • Biswas , A. ; Chakraborti , N. ; Sen , P.K. A genetic algorithm based multi-objective optimization approach applied to a hydrometallurgical circuit for ocean nodules. Miner. Process Extr. M. 2009, 30, 163–189.
  • Biswas , A. ; Chakraborti , N. ; Sen , P.K. Multi-objective optimization of manganese recovery from sea nodules using genetic algorithms . Mater. Manuf. Process 2009 , 24 , 22 – 30 .
  • Ma , Z. ; Ek , C. Rate processes and mathematical modelling of the acid leaching of manganese carbonate ore . Hydrometallurgy 1991 , 27 , 125 – 139 .
  • Veglio , F. ; Trifoni , M. ; Pagnanelli , F. ; Toro , L. Shrinking core model with variable activation energy: A kinetic model of manganiferous ore leaching with sulphuric acid and lactose . Hydrometallurgy 2001 , 60 , 167 – 179 .
  • Veglio , F. ; Trifoni , M. ; Toro , L. Leaching of manganiferous ores by glucose in a sulfuric acid solution: Kinetic modeling and related statistical analysis . I and EC Research 2001 , 40 , 3895 – 3901 .
  • Beolchini , F. ; Petrangelipanpini , M. ; Toro , L. ; Trifoni , M. ; Veglio , F. Acid leaching of manganiferous ores by sucrose: kinetic modelling and related statistical analysis . Miner. Eng. 2001 , 14 , 175 – 184 .
  • Pettersson , F. ; Chakraborti , N. ; Saxén , H. A genetic algorithms based multiobjective neural net applied to noisy blast furnace data . Appl. Soft. Comput. 2007 , 7 , 387 – 397 .
  • Deb , K. Multi-Objective Optimization by Evolutionary Algorithms ; John Wiley & Sons : Chichester , 2001 .
  • Collet , P. Genetic programming . In: Handbook of Research on Nature Inspired Computing for Economics and Management, Vol. 1 , Rennard , J.-P. (Ed.); Idea : Hershey , PA , 2007 , pp. 59 – 73 .
  • Poles , S. ; Vassileva , M. ; Sasaki , D. Multiobjective optimization software . In: Multiobjective Optimization, Interactive and Evolutionary Approaches, Lect. Notes Comput. Sc .; Branke , J. , Deb , K. , Miettinnen , K. , Słowiński , R. (Eds.); Springer : Heidelberg , 2008 , 5252 , 329 – 348 .
  • Laboratory , E.E.C. : Ecj: Version 18. Available at: http://cs.gmu. edu/~eclab/projects/ecj/ (accessed March 17, 2011).
  • Bhattacharya , B. ; Kumar , G.R.D. ; Agarwal , A. ; Erkoç , S. ; Singh , A. ; Chakraborti , N. Analyzing Fe-Zn system using molecular dynamics, evolutionary neural nets and multi-objective genetic algorithms . Comp. Mater. Sci. 2009 , 46 , 821 – 827 .
  • Poles , S. ; Geremia , P. ; Campos , F. ; Weston , S. ; Islam , M. MOGA-II for an automotive cooling duct optimization on distributed resources. In: Evolutionary Multi-Criterion Optimization, Springer, Heidelberg, Lect. Notes Comput. Sc. Springer: Berlin-Heidelberg , 2007 , 4403 , 633 – 644 .
  • Mostaghim , S. ; Teich , J. Strategies for finding good local guides in multi- objective particle swarm optimization (MOPSO). In: 2003 IEEE Swarm Intelligence Symposium Proceedings, IEEE Service Center: Indianapolis, Indiana, USA , 2003 , pp. 26 – 33 .
  • Helle , M. ; Pettersson , F. ; Chakraborti , N. ; Saxén , H. Modeling noisy blast furnace data using genetic algorithms and neural networks . Steel Res. Int. 2006 , 77 , 75 – 81 .
  • Biswas , A. Optimization of process flowsheets for extraction of non ferrous metals from lean manganese bearing ores, Doctoral Dissertation, Indian Institute of Technology, Kharagpur , 2011 .
  • 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 .
  • Fonseca , C.M. Multiobjective Genetic Algorithms with Applications to Control Engineering Problems. PhD thesis, Department ofAutomatic Control and Systems Engineering, University of Sheffield, Sheffield, UK , 1995 .
  • Dulikravich , G.S. ; Egorov , I.N. ; Colaco , M.J. Optimizing chemistry of bulk metallic glasses for improved thermal stability . Model. Simul. Mater. Sc. 2008 , 16, 7, Article Number: 075010.
  • Pettersson , F. ; Saxén , H. ; Deb , K. Genetic algorithm-based multicriteria optimization of ironmaking in the blast furnace . Mater. Manuf. Process 2009 , 24 , 343 – 349 .
  • Gujarathi , A.M. ; Babu , B.V. Improved multiobjective differential evolution (MODE) approach for Purified Terephthalic Acid (PTA) oxidation process . Mater. Manuf. Process 2009 , 24 , 303 – 319 .
  • Mitra , K. ; Majumder , S. ; Runkana , V. Multiobjective pareto optimization of an industrial straight grate Iron ore induration process using an evolutionary Algorithm . Mater. Manuf. Process 2009 , 24 , 331 – 342 .
  • Jourdan , L. ; Schutze , O. ; Legrand , T. ; Talbi , E.G. ; Wojkiewicz , J.L. An Analysis of the effect of multiple layers in the multi-objective design of conducting polymer composites . Mater. Manuf. Process 2009 , 24 , 350 – 357 .
  • Kovacic , M. Genetic Programming and Jominy test modeling . Mater. Manuf. Process 2009 , 24 , 806 – 808 .
  • Baumes , L.A. ; Collet , P. Examination of genetic programming paradigm for high-throughput experimentation and heterogeneous catalysis . Comp. Mater. Sci. 2009 , 45 , 27 – 40 .
  • Baumes , L.A. ; Blansche , A. ; Serna , P. ; Tchougang , A. ; Lachiche , N. ; Collet , P. ; Corma , A. Using genetic programming for an advanced performance assessment of industrially relevant heterogeneous catalysts . Mater. Manuf. Process 2009 , 24 , 282 – 292 .
  • Kovacic , M. ; Sarler , B. Application of the genetic programming for increasing the soft annealing productivity in steel industry . Mater. Manuf. Process 2009 , 24 , 369 – 374 .
  • Dimitriu , R.C. ; Bhadeshia , H.K.D.H. ; Fillon , C. ; Poloni , C. Strength of ferritic steels: neural networks and genetic programming . Mater. Manuf. Process 2009 , 24 , 10 – 15 .
  • Agarwal , A. ; Tewari , 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 .
  • Sen , P.K. Metals and Materials from deep sea nodules . An outlook for the future. Int. Mater. Rev. 2010 , 55 , 364 – 391 .

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.