Title of article :
Prediction length of carbon nanotubes in CVD method by artificial neural network
Author/Authors :
Mirabootalebi, S.O. Department of material science and engineering - Shahid Bahonar University of Kerman, Kerman , Babaheydari, R. M. Department of material science and engineering - Shahid Bahonar University of Kerman, Kerman
Abstract :
Most features of carbon nanotubes such as electrical, mechanical and thermal properties are depended on the length
of them. Thereby, the applications of carbon nanotubes significantly developed by controlling this key factor. In this paper, we
predict the length of carbon nanotubes in chemical vapor deposition (CVD) by using an artificial neural network. First, the
effective parameters in CVD for synthesizing carbon nanotubes include the thickness of catalyst, temperature and time of heat
treatment, rate of reactant gas; collected from various studies and they were determined as the input. Then, the length of carbon
nanotube considered as the output of the artificial neural network. A Feed-forward backpropagation network was designed with
16 and 12 neurons in the first and second hidden layers, respectively. The predicted outcomes were very close to the
experimental results, and the created model with 5.6% root mean square error was able to predict the length of carbon
nanotubes. It is expected that the designed model can be helpful for researchers to adjust and regulate the suitable parameters
among different effective variables in the CVD method. Furthermore, the result of the sensitivity analysis showed that the
temperature and rate of reactant gas and thickness of catalyst have the highest impact on the length of carbon nanotubes,
respectively.
Keywords :
Carbon nanotubes , chemical vapor deposition , prediction length of carbon nanotubes , Artificial neural network
Journal title :
Iranian Journal of Organic Chemistry