142
Views
9
CrossRef citations to date
0
Altmetric
Original Articles

Nature-Inspired Metaheuristic Techniques as Powerful Optimizers in the Paper Industry

, &
Pages 788-802 | Received 30 May 2012, Accepted 22 Sep 2012, Published online: 08 Jul 2013

REFERENCES

  • Goldberg , D.E. Genetic Algorithms in Search, Optimization and Machine Learning ; Addison-Wesley : Reading , MA , 1989 .
  • Storn , R. ; Price , K. Differential evolution—A simple and efficient adaptive scheme for global optimization over continuous. Spaces. Berkeley, CA, Tech. Rep. 1995, TR-95–012.
  • Dorigo , M. ; Maniezzo , V. ; Colorni , A. The ant system: Optimization by a colony of cooperating agents . IEEE Trans Syst Man Cybern B 1996 , 26 ( 1 ), 29 – 41 .
  • Eberhart , R.C. ; Kennedy , J. A new optimizer using particle swarm theory. Proceedings of the Sixth International Symposium on Micro-Machine and Human Science, Nagoya, Japan, Oct. 4–6, 1995, pp. 39–43. IEEE Service Center: Piscataway, NJ.
  • Karaboga , D. An idea based on honey bee swarm for numerical optimization. Erciyes University, Engineering Faculty, Turkey, Tech. Rep., 2005.
  • Karaboga , D.; Basturk B. A powerful and efficient algorithm for numerical function optimization: artificial bee colony (ABC) algorithm . Journal of Global Optimization 2007 , 39 , 171 – 459 .
  • Karaboga , D. ; Basturk , B. On the performance of artificial bee colony (ABC) algorithm . Applied Soft Computing 2008 , 8 , 687 – 697 .
  • Karaboga , D. ; Akay , B. A comparative study of Artificial Bee Colony algorithm . Applied Mathematics and Computation 2009 , 214 , 108 – 132 .
  • Singh , A. An artificial bee colony algorithm for the leaf constrained minimum spanning tree problem. Applied Soft Computing Journal 2009, 9 (2), 625–631.
  • Paszkowicz , W. Genetic algorithms, a nature-inspired tool: Survey of applications in materials science and related fields . Materials and Manufacturing Processes 2009 , 24 ( 2 ), 174 – 197 .
  • Coello Coello , C.A. ; Becerra , R.L. Evolutionary multiobjective optimization in materials science and engineering . Materials and Manufacturing Processes 2009 , 24 ( 2 ), 119 – 129 .
  • Pettersson , F. ; Saxen , H. ; Deb , K. Genetic algorithm-based multicriteria optimization of iron making in the blast furnace . Materials and Manufacturing Processes 2009 , 24 ( 3 ), 343 – 349 .
  • Pettersson , F. ; Suh , C. , Saxen , H. ; Rajan , K. ; Chakraborti , N. Analyzing sparse data for nitride spinels using data mining, neural networks, and multiobjective genetic algorithms . Materials and Manufacturing Processes 2008 , 24 ( 1 ), 2 – 9 .
  • Biswas , A. ; Chakraborti , N. ; Sen , P.K. Multiobjective optimization of manganese recovery from sea nodules using genetic algorithms . Materials and Manufacturing Processes 2008 , 24 ( 1 ), 22 – 30 .
  • Pettersson , F. ; Biswas , A. ; Sen , P.K. ; Saxen , H. ; Chakraborti , N. Analyzing leaching data for low-grade manganese ore using neural nets and multiobjective genetic algorithms . Materials and Manufacturing Processes 2009 , 24 ( 3 ), 320 – 330 .
  • Ciurana , J. ; Arias , G. ; Ozel , T. Neural network modeling and particle swarm optimization (PSO) of process parameters in pulsed laser micromachining of hardened AISI H13 steel . Materials and Manufacturing Processes 2009 , 24 ( 3 ), 358 – 368 .
  • 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 . Materials and Manufacturing Processes 2009 , 24 ( 3 ), 282 – 292 .
  • Dimitriu , R.C. ; Bhadeshia , H.K.D.H. ; Fillon , C. ; Poloni , C. Strength of ferritic steels: Neural networks and genetic programming . Materials and Manufacturing Processes 2008 , 24 ( 1 ), 10 – 15 .
  • Datta , S. ; Pettersson , F. ; Ganguly , S. ; Saxén , H. ; Chakraborti , N. Identification of factors governing mechanical properties of trip-aided steel using genetic algorithms and neural networks . Materials and Manufacturing Processes 2008 , 23 , 130 – 137 .
  • Kumar , A. ; Sahoo , D. ; Chakraborty , S. ; Chakraborti , N. Gas injection in steel-making vessels: coupling a fluid dynamic analysis with a genetic algorithms-based pareto-optimality . Materials and Manufacturing Processes 2005 , 20 ( 3 ), 363 – 379 .
  • Nandan , R. ; Rai , R. ; Jayakanth , R. ; Moitra , S. ; Chakraborti , N. ; Mukhopadhyay , A. Regulating crown and flatness during hot rolling: A multiobjective optimization study using genetic algorithms . Materials and Manufacturing Processes 2005 , 20 ( 3 ), 459 – 478 .
  • Mitra , K. Genetic algorithms in polymeric material production, design, processing and other applications: A review . International Materials Reviews 2008 , 53 , 275 – 297 .
  • Li , Y. ; Tseng , Y.-H. Hybrid differential evolution and particle swarm optimization approach to surface-potential-based model parameter extraction for nanoscale MOSFETs . Materials and Manufacturing Processes 2011 , 26 ( 3 ), 388 – 397 .
  • Ziarati , K. ; Akbari , R. ; Zeighami , V. On the performance of bee algorithms for resource-constrained project scheduling problem . Applied Soft Computing 2010 , 11 , 3720 – 3733 .
  • Pan , Q.K. ; Tasgetiren , M.F. ; Suganthan , P.N. ; Chua , T.J. A discrete artificial bee colony algorithm for the lot-streaming flow shop scheduling problem . Information Sciences 2011 , 181 ( 12 ), 2455 – 2468 .
  • Oliveira , de I.M.S. ; Schirru , R. Swarm intelligence of artificial bees applied to In-Core Fuel Management Optimization . Applied Soft Computing 2011 , 38 , 1039 – 1045 .
  • Dereli , T. ; Das , G.S. A hybrid ‘bee(s) algorithm’ for solving container loading problems . Applied Soft Computing 2011 , 11 , 2854 – 2862 .
  • Silva , C.M. ; Biscaia , E.C. Jr. Multiobjective optimization of a continuous pulp digester . Computer Aided Chemical Engineering 2003 , 14 , 1055 – 1060 .
  • Santos , A. ; Dourado , A. Global optimization of energy and production in process industries: a genetic algorithm application . Contr. Eng. Pract. 1999 , 7 , 549 – 554 .
  • Borairi , M. ; Wang , H. ; Roberts , J.C. Dynamic modelling of a paper making process based on bilinear system modelling and genetic neural networks. In Proceedings of UKACC International Conference on Control, Swansea, UK, September 1–4, 1998; 1277–1282.
  • Wang , H. ; Borairi , M. ; Roberts , J.C. ; Xiao , H. Modelling of a paper making process via genetic neural networks and first principle approaches. In IEEE International Conference on Intelligent Processing Systems, ICIPS, Beijing, China, October 28–31, 1997; 584–588.
  • Marshman , D.J. ; Chmelyk , T. ; Sidhu , M.S. ; Gopaluni , R.B. ; Dumont , G.A. Energy optimization in a pulp and paper mill cogeneration facility . Applied Energy 2010 , 87 , 3514 – 3525 .
  • Pant , M. ; Thangaraj , R. ; Singh , V.P. The economic optimization of pulp and paper making processes using computational intelligence. In Proceedings of AIP Conference Proceedings, Agra, India, July 2009; 462.
  • Deep , K. ; Chauhan , P. ; Bansal , J.C. Solving nonconvex trim loss problem using an efficient hybrid particle swarm optimization. In Proceedings of the World Congress on Nature & Biologically Inspired Computing, Coimbatore, India, Dec. 9–11, 2009; 1608–1611.
  • Jin , F.J. , Wang , H. , Li , P. Cleaner production for continuous digester processes based on hybrid Pareto genetic algorithm . Journal of Environmental Science 2003 , 15 ( 1 ), 129 – 135 .
  • Juuso , E.K. Hybrid models in dynamic simulation of a biological water treatment process. In International Conference on Computational Intelligence, Modelling and Simulation, Brno, Czech Republic, September 7–9, 2009; 30–35.
  • Deb , K. An efficient constraint handling method for genetic algorithms . Comput. Methods Appl. Mech. Engrg. 2000 , 18 ( 2–4 ), 311 – 338 .
  • Bilal , A. Chaotic bee colony algorithms for global numerical optimization . Expert Systems with Applications 2010 , 37 , 5682 – 5687 .
  • Banharnsakun , A. ; Achalakul , T. ; Sirinaovakul , B. The best-so-far selection in artificial bee colony algorithm . Applied Soft Computing 2011 , 11 ( 2 ), 2888 – 2901 .
  • Akay , B. ; Karaboga , D. Artificial bee colony algorithm for large-scale problems and engineering design optimization . J. Intell. Manuf. 2012 , 23 ( 4 ), 1001 – 1014 .
  • Gao , W.F. ; Liu , S. ; Huang , L. A global best artificial bee colony algorithm for global optimization . Journal of Computational and Applied Mathematics 2012 , 236 , 2741 – 2753 .
  • Gao , W.F. ; Liu , S.Y. A modified artificial bee colony algorithm. Computers and Operations Research 2012, 39 (3), 687–697.
  • Kaya , A. ; Keyes , M.A. Energy management technology in pulp, paper, and allied industries . Automatica 1983 , 19 ( 2 ), 11 – 130 .
  • Montastruc , L. ; Azzaro-Pantel , C. ; Pibouleau , L. ; Domenech , S. Use of genetic algorithms and gradient based optimization techniques for calcium phosphate precipitation . Chemical Engineering and Processing 2004 , 43 , 1289 – 1298 .
  • Adjiman , C.S. ; Androulakis , I.P. ; Floudas , C.A. Global optimization of mixed-integer nonlinear problems . AIChE Journal 2000 , 46 ( 9 ), 1769 – 1797 .
  • Sauer , R.N. ; Colville , A.R. ; Burwick , C.W. Computer points in the way to more profits . Hydrocarbon Process. Pet. Refiner 1964 , 43 , 84 – 90 .
  • Bracken , J. ; McCormick , G.P. Selected Applications of Nonlinear Programming ; Wiley : New York , 1968 ; 89 – 90 .
  • White , W.B. ; Johnson , S.M. ; Dantzig , G. Chemical equilibrium in complex mixture . J. Chem. Phys. 1958 , 28 , 751 – 755 .
  • Srinivas , M. ; Rangaiah , G.P. Differential evolution with tabu list for solving nonlinear and mixed-integer nonlinear programming problems . Ind. Eng. Chem. Res. 2007 , 46 ( 22 ), 7126 – 7135 .

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.