The backpropagation neural network for modelling
Author affiliations
DOI:
https://doi.org/10.15625/1813-9663/14/1/7879Abstract
In this paper we shall investigate some aspects on using the back propagation neural network for modeling. As an illustration, an experimental application to modelling equilibrium data of the liquid-liquid system Dy0HCl0DEHPA has been taken. It is shown that the neural network approach is an effective method for modelling various systems of this kind. Experimental results showed that errors of prediction of the proposed neural network arc really in the experimental range.Metrics
Metrics Loading ...
Downloads
Published
14-03-2016
How to Cite
[1]
T. N. Hà and N. T. Thủy, “The backpropagation neural network for modelling”, JCC, vol. 14, no. 1, pp. 26–33, Mar. 2016.
Issue
Section
Computer Science
License
1. We hereby assign copyright of our article (the Work) in all forms of media, whether now known or hereafter developed, to the Journal of Computer Science and Cybernetics. We understand that the Journal of Computer Science and Cybernetics will act on my/our behalf to publish, reproduce, distribute and transmit the Work.2. This assignment of copyright to the Journal of Computer Science and Cybernetics is done so on the understanding that permission from the Journal of Computer Science and Cybernetics is not required for me/us to reproduce, republish or distribute copies of the Work in whole or in part. We will ensure that all such copies carry a notice of copyright ownership and reference to the original journal publication.
3. We warrant that the Work is our results and has not been published before in its current or a substantially similar form and is not under consideration for another publication, does not contain any unlawful statements and does not infringe any existing copyright.
4. We also warrant that We have obtained the necessary permission from the copyright holder/s to reproduce in the article any materials including tables, diagrams or photographs not owned by me/us.