Surface Tension Prediction of Hydrocarbon Mixtures Using Artificial Neural Network
In this study, artificial neural network was used to predict the surface tension of 20 hydrocarbon mixtures. Experimental data was divided into two parts (70% for training and 30% for testing). Optimal configuration of the network was obtained with minimization of prediction error on testing data. The accuracy of our proposed model was compared with four well-known empirical equations. The artificial neural network was more accurate as the result showed that while standard deviation of ARD for artificial neural network was 3.63001, the standard deviation of ARD for Brock and Bird, Pitzer, Zuo-Stenby and Sastri-Rao models were 23.77569, 18.44848, 13.00388 and 9.63137 respectively.
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Fabrication of Antibacterial Mixed matrix Membranes Using zinc Oxide and Copper Oxide Nanoparticles and ZnO/CuO Nanocomposite
Adelee Anvarsalar, *, Abdolraouf Samadi Maybodi, Masoumeh Hezarjaribi
Iranian Journal of Polymer Science and Technology, -
Assessment of Adsorption Capacity of Thiol-functionalized Titanate Nanotubes for Removal of Cu(II) and Ni(II) from Aqueous Solution via Static Adsorption
M. Hezarjaribi, G. Bakeri *, M. Sillanpaa, M. J. Chaichi, S. Akbari, A. Rahimpour
Iranica Journal of Energy & Environment, Winter 2021