Modelling of Artificial Neural Network to Validate the Experimental Data of a Laboratory Scale ROT
DOI:
https://doi.org/10.13052/jgeu0975-1416.1126Keywords:
Run Out Table, Artificial Neural Network programs, Cooling rateAbstract
Run Out Tables (ROTs) are critical in the metallurgical sector for producing unique steel grade. The cooling rate controls the fine structure of steel, which is influenced by a number of factors such as the convective heat transfer coefficient, mean film temperature and many others. As a result, achieving a new steel grade necessitates the optimum combination of all of these factors. The cooling rate as a function of steel characteristics is obtained employing laboratory data such as convective heat transfer coefficient, mean film temperature, and mass flow rate of coolant at preset upper and lower nozzle distances from the experimental setup. Three Artificial Neural Network programs have been used to validate and check the performance of the experimental setup for optimize the cooling rate.
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H.N. Han, J. Lee, H.J. Kim, Y-S. Jin, ‘A model for deformation, temperature and phase transformation behavior of steels on the run-out table in hot strip mill’, Journal of Materials Processing Technology, Vol. 128, pp. 216–225, 2002.
X. Wang, F. Li, Q. Yang, A. He, ‘FEM analysis for residual stress prediction in hot rolled steel strip during the run-out table cooling’, Applied Mathematical Modelling, Vol. 37, pp. 586–609, 2013.
A. Suebsomran, S. Butdee, ‘Cooling process on a run-out table by the simulation method’, CAS Studies in Thermal Engineering 1, pp. 51–56, 2013.
A. Mukhopadhyay, S. Sikdar, ‘Implementation of an online run-out table model in a hot strip mill’, Journal of Materials Processing Technology, Vol. 169, pp. 164–172, 2005.
S. Serajzadeh, ‘Prediction of temperature variations and kinetics of austenite phase change on the run-out table’, Materials Science and Engineering A, Vol. 421, pp. 260–267, 2006.
P. Suwanpinij, U. Prahl, W. Bleck, R. Kawalla, ‘Fast algorithms for phase transformations in dual-phase steels on a hot strip mill run-out table (ROT)’, Archives of Civil and Mechanical Engineering, Vol. 12, pp. 305–311, 2012.
D. Weisz-Patrault, T. Koedinger, ‘Residual stress on the run-out table accounting for multiphase transitions and transformation induced plasticity’, Applied Mathematical Modelling, Vol. 60, pp. 18–33, 2018.
Z. Zhou, P.F. Thomson, Y.C. Lam, D.D.W. Yuen, ‘Numerical analysis of residual stress in hot-rolled steel strip on the run-out table’, Journal of Materials Processing Technology, Vol. 132, pp. 184–197, 2003.
W. Xiao-dong, L. Fei, J. Zheng-yi, ‘Thermal, Microstructural and Mechanical Coupling Analysis Model for Flatness Change Prediction During Run-Out Table Cooling in Hot Strip Rolling’, Journal of Iron and Steel Research, Vol. 19(9), pp. 43–51, 2012.
A. Aditya, P. Sarkar and P. Mandal, ‘GA Optimization of Cooling Rate of a Heated MS Plate in a Laboratory-Scale ROT’, Advances in Materials, Mechanical and Industrial Engineering, pp. 631–648, 2019.
Sudhansu Mohan Padhy, Purna Chandra Mishra, Ruby Mishra, Nozzle positioning for ultra-fast cooling of steel strips in a run out Table, Materials Today: Proceedings 5 (2018) 18656–18663.
P. Bhattacharya, A.N. Samanta, S. Chakraborty, Spray evaporative cooling to achieve ultra fast cooling in runout table, International Journal of Thermal Sciences 48 (2009) 1741–1747.
Liu En-yan, Peng Liang-gui, Yuan Guo, Wang Zhao-dong, Zhang Dian-hua, Wang Guo-dong, Advanced run-out table cooling technology based on ultra fast cooling and laminar cooling in hot strip mill, J. Cent. South Univ. (2012) 19: 1341–1345, DOI: 10.1007/s11771-012-1147-6.
Sudhansu M. Padhy, Achintya H. Kambli, Manoj Ukamanal, Purna Chandra Mishra, Cooling mechanisms on run out table: A technical review, Materials Today: Proceedings 5 (2018) 18162–18169.
Siamak Serajzadeh, Prediction of temperature variations and kinetics of austenite phase change on the run-out table, Materials Science and Engineering A421 (2006) 260–267.
G.N. Xie, Q.W. Wang, M. Zeng, L.Q. Luo, ‘Heat transferanalysis for shell-and-tube heat exchangers with experimental data by artificial neural networks approach’, Applied Thermal Engineering, Vol. 27, pp. 1096–1104, 2007.
K. Ermis, A. Erek, I. Dincer, ‘Heat transfer analysis of phase change process in a finned-tube thermal energy storage system using artificial neural network’, International Journal of Heat and Mass Transfer, Vol. 50, pp. 3163–3175, 2007.
A. Pacheco-Vega, M. Sen, K.T. Yang, R.L. McClain, ‘Neural network analysis of fin-tube refrigerating heat exchanger with limited experimental data’, International Journal of Heat and Mass Transfer, Vol. 44, pp. 763–770, 2001.
Y. Islamoglu, ‘A new approach for the prediction of the heat transfer rate of the wire-on-tube type heat exchanger – use of an artificial neural network model’, Applied Thermal Engineering, Vol. 23, pp. 243–249, 2003.
K. Jambunathan, S.L. Hartle, S. Ashforth-Frost and V.N. Fontama, ‘Evaluating convective heat transfer coefficients using neural networks’, International Journal of Heat and Mass Transfer, Vol. 39, pp. 2329–2332, 1996.
A.M. Hassan, A. Alrashdan, M.T. Hayajneh, A.T. Mayyas, ‘Prediction of density, porosity and hardness in aluminum–copper-based composite materials using artificial neural network’, Journal of Materials Processing Technology, Vol. 209, pp. 894–899, 2009.
C.K. Tan, J. Ward, S.J. Wilcox, R. Payne, ‘Artificial neural network modelling of the thermal performance of a compact heat exchanger’, Applied Thermal Engineering, Vol. 29, pp. 3609–3617, 2009.
M. Patel G.C, A.K. Shettigarb, P. Krishnaa, M.B. Parappagoudarc, ‘Backpropagation genetic and recurrent neural network applications in modelling and analysis of squeeze casting process’, Applied Soft Computing, Vol. 59, pp. 418–437, 2017.
P. Biswas, M.S. Mondal, S. Mookherjee, P. Mandal, ‘Modelling of Artificial Neural Network to control the cooling rate of a Laboratory Scale Run-Out Table’, MATEC Web of Conferences, Vol. 306:03004, pp. 1–5, 2020.