Tensile Parameters Evaluation of Two Solid Solution Super Alloys by ANN Modeling


(*) Corresponding author


Authors' affiliations


DOI's assignment:
the author of the article can submit here a request for assignment of a DOI number to this resource!
Cost of the service: euros 10,00 (for a DOI)

Abstract


Solid solution nickel base super alloys 617 and 276 possess excellent mechanical properties, oxidation, creep-resistance, and phase stability at high temperatures. These alloys are used in complex and stochastic applications including the structural material of high temperature heat exchanger. Thus, it is difficult to predict their output characteristics mathematically. Therefore, the non-conventional methods for modeling become more effective. These two alloys have been subjected to tensile deformation at high temperatures and different tensile parameters have been used to develop the new models. Artificial neural network (ANN) was applied to predict yield strength (YS), Ultimate Tensile strength (UTS), percent elongation (%El) and percent reduction in area (%RA) for the two alloys. The neural network comprises twenty hidden layer with feed forward back propagation hierarchical. The neural network has been designed with MATLAB Neural Network Toolbox. The results show a high correlation between the predicted and the observed results which indicates the validity of the models
Copyright © 2014 Praise Worthy Prize - All rights reserved.

Keywords


Super Alloys; Tensile Parameters; Artificial Neural Network

Full Text:

PDF


References


W. Xinxin, O. Kaoru, “Thermochemical Water Splitting for Hydrogen Production Utilizing Nuclear Heat from an HTGR”, Tsinghua Science and Technology, vol. 10, n. 2, 2005, pp. 270-276

W. Ren, R. Swindeman, “Preliminary Consideration of Alloys 617 and 230 for Generation IV Nuclear Reactor Applications” Proceedings of 2007 ASME Pressure Vessels and Piping Division Conference, July 22-26, 2007, San Antonio, TX, USA

Vikram Marthamdum (2008) “Tensile Deformation, Toughness and Crack Propagation Studies of Alloy 617” Dissertation, University of Nevada LasVegas, USA.

Marthandam, V., and Roy, A.K., 2008, "Tensile Deformation of Alloy 617 at Different Temperatures," ASME Conf. Proc. / Year 2007, 6, pp. 411-415

Ajit K. Roy, Muhammad H. Hasan, Joydeep Pal ‘Creep deformation of Alloys 617 and 276 at 750–950°C’’ Materials Science and Engineering: A, Volume 520, Issues 1–2, 15 September 2009, Pages 184-188

Ajit K. Roy, Joydeep Pal, Chandan Mukhopadhyay “Dynamic strain ageing of an austenitic superalloy—Temperature and strain rate effects’ Materials Science and Engineering: A, Volume 474, Issues 1–2, 15 February 2008, Pages 363-370

Longzhou Ma, Shawoon k. roy, Muhammad H. Hasan, Joydeep pal “Time-Dependent Fatigue Crack Propagation Behavior of Two Solid-Solution-Strengthened Ni-Based Superalloys—inconel 617 and haynes 230’ Metall and Mat Trans A (2012) 43:491-504

Al Hazza, M.H.F., Adesta, E.Y.T., Hasan, M.H., Tool life modeling in high speed turning of AISI 4340 hardened steel with mixed ceramic tools by using face central cubic design, (2013) International Review on Modelling and Simulations (IREMOS), 6 (4), pp. 1334-1338.

A. Guedri, S. Tlili, B. Merzoug, A. Zeghloul, An Artificial Neural Network Model for Predicting Mechanical Properties of CMn (V-Nb-Ti) Pipeline Steel in Industrial Production Conditions, (2007) International Review of Mechanical Engineering (IREME), 1 (6), pp. 666 - 674.

Deiab, I.M., El Kadi, H.A., Artificial neural networks - based prediction of tool wear progression, (2010) International Review of Mechanical Engineering (IREME), 4 (4), pp. 410-416.

Rajabi, J., Nadali, S., Alibeiki, E., Rajabi, J., Rajabi, M., Prediction of the mechanical properties of nano-structured Cr-WC Coatings during electrodeposition process using artificial neural network, (2012) International Review of Mechanical Engineering (IREME), 6 (3), pp. 636-639.

Ranganathan, S., Senthilvelan, T., Prediction of machining parameters of surface roughness of GFRP composite by applying ANN and RSM, (2012) International Review of Mechanical Engineering (IREME), 6 (5), pp. 1068-1073.

M. H. F Al Hazza & E. Y. T. Adesta,. Flank Wear Modeling in High Speed Hard Turning by Using Artificial Neural Network and Regression Analysis. Advanced Materials Research, 264, 1097-1101(2011).

E. Y. T. Adesta, M.H.F. Al Hazza, Suprianto M. Y & Riza, M.. Prediction of Cutting Temperatures by Using Back Propagation Neural Network Modeling when Cutting Hardened H-13 Steel in CNC End Milling. Advanced Materials Research, 576, 91-94(2012).

Al Hazza, M.H.F., Ndaliman, M.B., Hasan, M.H., Ali, M.Y., Khan, A.A., Modeling the electrical parameters in EDM process of Ti6Al4V alloy using Neural Network method, (2013) International Review of Mechanical Engineering (IREME), 7 (7), pp. 1464-1470.

Muhammad H Hasan , Muataz Al Hazza and Mubarak W. ALGrafi “ANN Modeling of Nickel Base Super Alloys for Time Dependent Deformation” Journal of Automation and Control Engineering Vol. 2, No. 4, December 2014

Freeman J.A., Skapura, D.M. (1991). Neural networks, algorithms, applications, and programming techniques. Addison-Wesley Publishing Company, Inc. Printed in the United States of America. ISBN 0201513765

Liu, X. G., Pan, X., Li, J. G., Wang, Y. H., Zhu, S. Z., & Pang, Y. Y. (2013). Research on Coupled Effects of Alloy Elements for Precipitation Strengthening to Rupture Life of Single Crystal Ni-Based Superalloys by RBF Networks. Advanced Materials Research, 602, 584-589.

D. W., Yun, S. M. Seo, H. W., Jeong, Kim, I. S., & Yoo, Y. S. (2013). Modelling high temperature oxidation behaviour of Ni-Cr-W-Mo alloys with Bayesian neural network. Journal of Alloys and Compounds.

A. Sharma, V. Yadava, & Judal, K. B. (2013). Intelligent Modelling and Multi-Objective Optimisation of Laser Beam Cutting of Nickel Based Superalloy Sheet. International Journal of Manufacturing, Materials, and Mechanical Engineering (IJMMME), 3(2), 1-16.

N. Bano, A. Fahim, & M. Nganbe, (2012, March). Prediction of Fracture Energy of IN738LC Superalloy using Neural Networks. In ICF12, Ottawa 2009.

D’Addona, D., Segreto, T., Simeone, A., & Teti, R. (2011). ANN tool wear modelling in the machining of nickel superalloy industrial products. CIRP Journal of Manufacturing Science and Technology, 4(1), 33-37.

J.Ciurana, G., Arias &, T. Ozel (2009). Neural network modeling and particle swarm optimization (PSO) of process parameters in pulsed laser micromachining of hardened AISI H13 steel. Materials and Manufacturing Processes, 24(3), 358-368.

Adib, H., Haghbakhsh, R., Saidi, M., Takassi, M. A., Sharifi, F., Koolivand, M., ... & Keshtkari, S. (2013). Modeling and optimization of Fischer–Tropsch synthesis in the presence of Co (III)/Al< sub> 2 O< sub> 3 catalyst using artificial neural networks and genetic algorithm. Journal of Natural Gas Science and Engineering, 10, 14-24.

Bano, N., Fahim, A., & Nganbe, M. (2010, August). Modeling of?'Precipitate Size of IN738LC Using Levenberg–Marquardt Backpropagation Neural Network. In Integrated Intelligent Computing (ICIIC), 2010 First International Conference on (pp. 45-50). IEEE.


Refbacks

  • There are currently no refbacks.



Please send any question about this web site to info@praiseworthyprize.com
Copyright © 2005-2024 Praise Worthy Prize