351
Views
27
CrossRef citations to date
0
Altmetric
Original Articles

Optimization of hybrid laser–TIG welding of 316LN stainless steel using genetic algorithm

, , , &
Pages 1094-1100 | Received 21 Nov 2016, Accepted 11 Mar 2017, Published online: 16 May 2017

References

  • Vogt, J.B.; Foct, J.; Regnard, C.; Robert, G.; Dhers, J. Low-temperature fatigue of 316L and 316LN austenitic stainless steels. Metallurgical Transactions A 1991 Oct 1, 22 (10), 2385–2392.
  • Yan, J.; Gao, M.; Zeng, X. Study on microstructure and mechanical properties of 304 stainless steel joints by TIG, laser and laser-TIG hybrid welding. Optics and Lasers in Engineering 2010, 48 (4), 512–517.
  • Gao, M.; Zeng, X.; Hu, Q.; Yan, J. Laser-TIG hybrid welding of ultra-fine grained steel. Journal of Materials Processing Technology 2009, 209 (2), 785–791.
  • Ming, G.; Xiaoyan, Z.; Qianwu, H. Effects of gas shielding parameters on weld penetration of CO 2 laser-TIG hybrid welding. Journal of Materials Processing Technology 2007, 184 (1), 177–183.
  • Chuang Cai; Liqun Li; Xinya Chen; Jiecai Feng. Study on laser-MAG hybrid weaving welding characteristics for high-strength steel. Journal of Laser Applications 2016, 28 (2), 022401. doi:10.2351/1.4944095.
  • Tadamalle, A.P.; Reddy, Y.P.; Ramjee, E. Influence of laser welding process parameters on weld pool geometry and duty cycle. Advances in Production Engineering & Management 2013 Mar 1, 8 (1), 52.
  • Subashini, L.; PhaniPrabhakar, K.V.; Ravi C. Gundakaram; Swati Ghosh; Padmanabham, G. Single pass laser-arc hybrid welding of maraging steel thick sections. Materials and Manufacturing Processes 2016, online, doi:10.1080/10426914.2016.1221099.
  • Montgomery, D.C. Design and Analysis of Experiments, 5th Edn.; John Wiley & Sons: New York, 2001.
  • Myers, R.H.; Montgomery, D.C. Response Surface Methodology. John Wiley & Sons: New York, 1995.
  • Moradi, M.; Ghoreishi, M.; Torkamany, M.J. Modelling and optimization of Nd:YAG laser and tungsten inert gas (TIG) hybrid welding of stainless steel. Lasers in Engineering 2014, 27, 211–230.
  • Igor Krivtsun; Uwe Reisgen; Oleksii Semenov; Alexander Zabirov. Modeling of weld pool phenomena in tungsten inert gas, CO2-laser and hybrid (TIG+CO2-laser) welding. Journal of Laser Applications 2016, 28, 022406, doi:10.2351/1.4943994
  • Kilickap, E.; Huseyinoglu, M. Selection of optimum drilling parameters on burr height using response surface methodology and genetic algorithm in drilling of AISI 304 stainless steel. Materials and Manufacturing Processes 2010, 25 (10), 1068–1076.
  • Olakanmi, E.O. Optimization of the quality characteristics of laser-assisted cold-sprayed (LACS) aluminum coatings with taguchi design of experiments (DOE). Materials and Manufacturing Processes 2016, 31 (11), 1490–1499.
  • Sathiya, P.; Jaleel, M.Y. Grey-based Taguchi method for optimization of bead geometry in laser bead-on-plate welding. Advances in Production Engineering & Management 2010 Dec 1, 5 (4).
  • Nagaraju, S.; Vasantharaja, P.; Chandrasekhar, N.; Vasudevan, M.; Jayakumar, T. Optimization of welding process parameters for 9Cr-1Mo steel using RSM and GA. Materials and Manufacturing Processes 2016, 31 (3), 319–327.
  • Álvarez, M.J.; Ilzarbe, L.; Viles, E.; Tanco, M. The use of genetic algorithms in response surface methodology. Quality Technology & Quantitative Management 2009, 6 (3), 295–307.
  • Chandrasekhar, N.; Vasudevan, M. Intelligent modeling for optimization of A-TIG welding process. Materials and Manufacturing Processes 2010, 25 (11), 1341–1350.
  • Vasudevan, M.; Arunkumar, V.; Chandrasekhar, N.; Maduraimuthu, V. Genetic algorithm for optimization of A-TIG welding process for modified 9Cr–1Mo steel. Science and Technology of Welding and Joining 2010, 15 (2), 117–123.
  • Zhou, Q.; Jiang, P.; Shao, X.; Gao, Z.; Cao, L.; Yue, C.; Li, X. Optimization of process parameters of hybrid laser–arc welding onto 316L using ensemble of metamodels. Metallurgical and Materials Transactions B 2016, 1–15. doi:10.1007/s11663-016-0664-3.
  • Hariharan, K.; Nguyen, N.T.; Chakraborti, N.; Lee, M.G.; Barlat, F. Multi‐objective genetic algorithm to optimize variable drawbead geometry for tailor welded blanks made of dissimilar steels. Steel Research International 2014 Dec 1, 85 (12), 1597–607.
  • Lestan, Z.; Klancnik, S.; Balic, J.; Brezocnik, M. Modeling and design of experiments of laser cladding process by genetic programming and nondominated sorting. Materials and Manufacturing Processes 2015 Apr 3, 30 (4), 458–463.
  • Chakraborti, N. Critical assessment 3: The unique contributions of multi-objective evolutionary and genetic algorithms in materials research. Materials Science and Technology 2014 Sep 1, 30 (11), 1259–1262.
  • Giri, B.K.; Pettersson, F.; Saxén, H.; Chakraborti, N. Genetic programming evolved through bi-objective genetic algorithms applied to a blast furnace. Materials and Manufacturing Processes 2013 Jul 3, 28 (7), 776–782.
  • Giri, B.K.; Hakanen, J.; Miettinen, K.; Chakraborti, N. Genetic programming through bi-objective genetic algorithms with a study of a simulated moving bed process involving multiple objectives. Applied Soft Computing 2013 May 31, 13 (5), 2613–2623.
  • Kim, D.; Rhee, S.; Park, H. Modeling and optimization of a GMA welding process by genetic algorithm and response surface methodology. International Journal of Production and Research 2002, 40 (7), 1699–1711.
  • Mohanty, K.; Roy, G.G.; Chakraborti, N. Simulation and meta-modeling of electron beam welding using genetic algorithms. Metallurgia Italiana 2016 Mar 1 (3), 45–48.
  • Paszkowicz, W. Genetic algorithms, a nature-inspired tool: a survey of applications in materials science and related fields: part II. Materials and Manufacturing Processes 2013, 28 (7), 708–725.
  • Oladele, R.O.; Sadiku, J.S. Genetic algorithm performance with different selection methods in solving multi-objective network design problem. International Journal of Computer Applications 2013, 70 (12), 5–9.
  • Sharma, A.; Mehta, A. Review paper of various selection methods in genetic algorithm. International Journal of Advance Research in Computer Science and Software Engineering 2013, 3 (7), 1476–1479.
  • Goldberg David, E.; Kalyanmoy Deb. A comparative analysis of selection schemes used in genetic algorithms. Foundations of Genetic Algorithms 1991, 1, 69–93.

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.