Paper presented at the 6th International Conference on Heat Transfer, Fluid Mechanics and Thermodynamics, South Africa, 30 June - 2 July, 2008.
The present study deals with the prediction
of heat transfer coefficients for water and
benzene using ANN in a vertical thermosiphon
reboiler. The experimental data from the
literature were used for training of feed forward
artificial neural network with error back
propagation technique. Different training
algorithms have been applied with different
hidden layers and nodes to train the network. It
was observed that the heat transfer coefficients
predicted was close to the experimental data
within the maximum error of ± 20 %. If more
exhaustive input data were fed then error would
have become still lesser. It has been observed
that some algorithms are very efficient with
respect to training time in comparison to other
algorithms.