Article ID Journal Published Year Pages File Type
230896 The Journal of Supercritical Fluids 2013 8 Pages PDF
Abstract

Present work investigated the potential of artificial neural network (ANN) model to correlate the bubble and dew points pressures of binary systems containing carbon dioxide (CO2) and hydrocarbon systems as functions of reduced temperature of non-CO2 compounds, critical pressure, acentric factor of non-CO2 compounds and CO2 composition. In this regards, five binary systems at the temperature and pressure ranges of 263.15–393.15 K at 0.18–12.06 MPa were used to examine the feasibility of cascade-forward back-propagation ANN model. In this regard, the collected experimental data were divided in to two different subsets namely training and testing subsets. The training subset was selected in a way that covers all the ranges of the experimental data and operating conditions. Then, the accuracy of the proposed ANN model was evaluated through a test data set not used in the training stage. The optimal configuration of the proposed model was obtained based on the error analysis including minimum average absolute relative deviation percent (AARD %) and the appropriate (close to one) correlation coefficient (R2) of test data set. The obtained results show that the optimum neural network architecture was able to predict the phase envelope of binary system containing CO2 with an acceptable level of accuracy of AARD % of 2.66 and R2 of 0.9950 within their experimental uncertainty. In addition, comparisons were done between the Peng–Robinson (PR) equation of state (EOS) and ANN model for three different binary systems including CO2 + 1-hexene, CO2 + n-Hexane, and CO2 + n-butane. Results show that developed optimal ANN model is more accurate compared to the PR EOS.

Graphical abstractFigure optionsDownload full-size imageDownload as PowerPoint slideHighlights► Artificial neural network (ANN) model is presented for estimation of bubble and dew point pressure of binary system containing CO2. ► To verify the models, total of 316 data from 5 hydrocarbon compounds have been considered. ► The results show that the ANN model could predict phase envelope of binary systems with the R2 of 0.9950.

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Physical Sciences and Engineering Chemical Engineering Chemical Engineering (General)
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