Title of article :
Modeling heat transfer of non-Newtonian nanofluids using hybrid ANN-Metaheuristic optimization algorithm
Author/Authors :
Hojjat ، Mohammad - University of Isfahan
Abstract :
An optimal artificial neural network (ANN) has been developed to predict the Nusselt number of nonNewtonian nanofluids. The resulting ANN is a multilayer perceptron with two hidden layers consisting of six and nine neurons, respectively. The tangent sigmoid transfer function is the best for both hidden layers and the linear transfer function is the best transfer function for the output layer. The network was trained by a particle swarm optimization (PSO) algorithm. Nanofluid concentration, Reynolds number, and Prandtl number are input for the ANN and the nanofluid Nusselt number is its output. There exists an excellent agreement between the ANN predicted values and experimental data. The average and maximum differences between experimental data and those predicted by ANN are about 0.8 and 5.6 %, respectively. It was also found that ANN predicts the Nusselt number of nanofluids more accurately than the previously proposed correlation.
Keywords :
Nanofluids , Non , Newtonian , Artificial neural network , Multi , layer perceptron , Particle swarm Optimization
Journal title :
Journal of Particle Science and Technology
Journal title :
Journal of Particle Science and Technology