Title of article :
Modeling and Optimization of Roll-bonding Parameters for Bond Strength of Ti/Cu/Ti Clad Composites by Artificial Neural Networks and Genetic Algorithm
Author/Authors :
Mahdavi Jafari ، M. Department of Materials Science and Engineering - Shahid Bahonar University of Kerman , Khayati ، G. R. Department of Materials Science and Engineering - Shahid Bahonar University of Kerman , Hosseini ، M. Department of Mechanical Engineering - Faculty of Engineering - University of Hormozgan , Danesh-Manesh ، H. Department of Materials Science and Engineering - School of Engineering - Shiraz University
From page :
1885
To page :
1893
Abstract :
This paper deals with modeling and optimization of the rollbonding process of Ti/Cu/Ti composite for determination of the best rollbonding parameters leading to the maximum Ti/Cu bond strength by combination of neural network and genetic algorithm. An artificial neural network (ANN) program has been proposed to determine the effect of practical parameters, i.e., rolling temperature, reduction in thickness, postannealing time, postannealing temperature and rolling speed on the bond strength of Ti/Cu composite. The most suitable model with correlation coefficient (R2) of 0.98 and mean absolute error (MAPE) 3.5 was determined using genetic algorithm (GA) and the optimum practice condition are proposed. Moreover, the sensitivity analysis results showed the postannealing temperature with the negative effects is the most influential parameter on the strength of bonding.
Keywords :
Ti , Cu , Ti Clad Composite , Roll , bonding , Bond Strength , Genetic Algorithm , Artificial Neural Network
Journal title :
International Journal of Engineering
Record number :
2502539
Link To Document :
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