Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
669637 | International Journal of Thermal Sciences | 2009 | 6 Pages |
Turbulent forced convection correlations are documented in the literature for air, gases and vapors (Pr∼0.7), for common liquids (Pr>1) and for liquid metals (Pr<0.03). In spite of this, there is a small gap in the Pr sub-interval between 0.1 and 1.0, which is occupied by binary gas mixtures. In this paper, data for turbulent forced convection for the in-tube flow have been gathered and a fully connected back-propagation Artificial Neural Network (ANN) is used to learn the pattern of Nu as a double-valued function of Re and Pr. The available data are separated in two subsets to train and test the neural network. A set with 80% of the data is used to train the ANN and the remaining 20% are used for testing. After the neural network is trained, we make use of the excellent nonlinear interpolation capabilities of ANNs to predict Nu for the sought range 0.1