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Original Articles

Effect of Fluid Characterization on CVD Liquid Drop-out Predictions of Gas Condensate Fluids Using an Equations of State Model

Pages 1548-1562 | Published online: 17 Jun 2008
 

Abstract

This article presents a recent study carried out to evaluate the effect of fluid characterization on liquid drop-out predictions for constant volume depletion (CVD) of gas condensate fluids using the Peng-Robinson equations of state (EOS) model. The work is based on 11 different gas condensate fluids of widely varying overall fluid compositions and C7+ plus fraction properties. The accompanying experimental data on dew point pressures and liquid drop-out from CVD tests are employed to evaluate the effect of fluid characterization on predictions. Initially, all predictions were based on uncharacterized C7+ fraction. Subsequently, all C7+ fractions were characterized using the methods proposed by Katz and Pedersen, respectively, and predictions were carried out on the basis of characterized fluids. All predicted values reported in this work are purely predictive, i.e., C7+ data, and the characterized fluid data has been used as it is, without tuning the EOS models. The performance of the uncharacterized and characterized fluids is compared. The study demonstrates that EOS predictions are significantly improved when the C7+ fraction is described by several pseudo-components and an extended higher plus fraction rather than treating it as a single lumped component.

Notes

a Partial molar distribution of C7+ for some fluids reported in CitationAl-Meshari (2004) have been converted to a composite C7+ fraction to evaluate its impact on CVD predictions; similarly, specific gravities and molecular weights of higher carbon number plus fractions such as C10+ or C12+ have been used to express them in terms of C7+.

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