Prediction of Molecular Weight of Petroleum Fluids by Empirical Correlations and Artificial Neuron Networks

Author:

Stratiev Dicho12ORCID,Sotirov Sotir3,Sotirova Evdokia3,Nenov Svetoslav4,Dinkov Rosen1,Shishkova Ivelina1ORCID,Kolev Iliyan Venkov12,Yordanov Dobromir3,Vasilev Svetlin3,Atanassov Krassimir23ORCID,Simeonov Stanislav3,Palichev Georgi Nikolov2

Affiliation:

1. LUKOIL Neftohim Burgas, 8104 Burgas, Bulgaria

2. Institute of Biophysics and Biomedical Engineering, Bulgarian Academy of Sciences, Georgi Bonchev 105, 1113 Sofia, Bulgaria

3. Intelligent Systems Laboratory, Department Industrial Technologies and Management, University Prof. Dr. Assen Zlatarov, 8010 Burgas, Bulgaria

4. Department of Mathematics, University of Chemical Technology and Metallurgy, Kliment Ohridski 8, 1756 Sofia, Bulgaria

Abstract

The exactitude of petroleum fluid molecular weight correlations affects significantly the precision of petroleum engineering calculations and can make process design and trouble-shooting inaccurate. Some of the methods in the literature to predict petroleum fluid molecular weight are used in commercial software process simulators. According to statements made in the literature, the correlations of Lee–Kesler and Twu are the most used in petroleum engineering, and the other methods do not exhibit any significant advantages over the Lee–Kesler and Twu correlations. In order to verify which of the proposed in the literature correlations are the most appropriate for petroleum fluids with molecular weight variation between 70 and 1685 g/mol, 430 data points for boiling point, specific gravity, and molecular weight of petroleum fluids and individual hydrocarbons were extracted from 17 literature sources. Besides the existing correlations in the literature, two different techniques, nonlinear regression and artificial neural network (ANN), were employed to model the molecular weight of the 430 petroleum fluid samples. It was found that the ANN model demonstrated the best accuracy of prediction with a relative standard error (RSE) of 7.2%, followed by the newly developed nonlinear regression correlation with an RSE of 10.9%. The best available molecular weight correlations in the literature were those of API (RSE = 12.4%), Goosens (RSE = 13.9%); and Riazi and Daubert (RSE = 15.2%). The well known molecular weight correlations of Lee–Kesler, and Twu, for the data set of 430 data points, exhibited RSEs of 26.5, and 30.3% respectively.

Funder

Asen Zlatarov University–Burgas

Publisher

MDPI AG

Subject

Process Chemistry and Technology,Chemical Engineering (miscellaneous),Bioengineering

Reference51 articles.

1. Lemus, M.C.S. (2015). Extended Distillation and Property Correlations for Heavy Oil. [Ph.D. Thesis, University of Calgary].

2. Physical properties of heavy oil distillation cuts;Lemus;Fuel,2016

3. Nji, G.N. (2010). Characterization of heavy oils and bitumens. [Ph.D. Thesis, University of Calgary].

4. Al-Mhanna, N.M. (2018). Simulation of High Pressure Separator Used in Crude Oil Processing. Processes, 6.

5. Some guidelines for choosing a characterization method for petroleum fractions in process simulators;Aladwani;Trans IChemE Part A Chem. Eng. Res. Des.,2005

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