@article { author = {Mahdavi, Mehrdad and Khayati, Gholam Reza}, title = {Artificial Neural Network Based Prediction Hardness of Al2024-Multiwall Carbon Nanotube Composite Prepared by Mechanical Alloying}, journal = {International Journal of Engineering}, volume = {29}, number = {12}, pages = {1726-1733}, year = {2016}, publisher = {Materials and Energy Research Center}, issn = {1025-2495}, eissn = {1735-9244}, doi = {}, abstract = {In this study, artificial neural network was used to predict the microhardness of Al2024-multiwall carbon nanotube(MWCNT) composite prepared by mechanical alloying. Accordingly, the operational condition, i.e., the amount of reinforcement, ball to powder weight ratio, compaction pressure, milling time, time and temperature of sintering as well as vial speed were selected as independent input and the mean micro-hardness of composites was selected as model output. To train the model, a Multilayer perceptron neural network structure and feed-forward back propagation algorithm has been employed. After testing many different ANN architectures an optimal structure of the model i.e. 7-25-1 is obtained. The predicted results, with a correlation relation between 0.982 and 0.9952 and 3.26% mean absolute error, show a very good agreement with the experimental values. Furthermore, the ANN model was subjected to a sensitivity analysis and determined the significant inputs affecting hardness of the samples.}, keywords = {Al2024 multiwall carbon nanotube composite,Artificial Neural Network,microhardness,Mechanical milling}, url = {https://www.ije.ir/article_72846.html}, eprint = {https://www.ije.ir/article_72846_c62480c4f17eeae3d7996f94d538b78f.pdf} }