4.5 Article

High pressure multi-component vapor-liquid equilibrium data and model predictions for the LNG industry

Journal

JOURNAL OF CHEMICAL THERMODYNAMICS
Volume 113, Issue -, Pages 81-90

Publisher

ACADEMIC PRESS LTD- ELSEVIER SCIENCE LTD
DOI: 10.1016/j.jct.2017.05.023

Keywords

LNG; Natural gas; Distillation; Phase equilibrium; Gas purification

Funding

  1. Chevron
  2. Australian Research Council [LP0882519, LP120200605]
  3. Australian Research Council [LP120200605, LP0882519] Funding Source: Australian Research Council

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Accurate simulations of scrub columns in liquefied natural gas (LNG) plants are challenging, requiring frequent solution of the non-linear equations governing vapor-liquid equilibrium (VLE), material, and energy balances for multi-component mixtures. Reliable fluid property predictions at high pressures and low temperatures are thus crucial; however, no high-quality multi-component VLE data at conditions relevant to the LNG scrub column are available to test commonly-used equations of state (EOS). Here we report VLE measurements at pressures to 9 MPa and temperatures from (203 to 273) K for mixtures containing CH4, C2H6, C3H8, iC(4)H(10), nC(4)H(10) and/or N-2. Far from the mixture's critical point, the GERG-2008 EOS predictions were more accurate than the Peng-Robinson EOS predictions. Above 7 MPa both EOS under-predicted the liquid phase's methane content and over-predicted its butane content by 10-50 times the experimental uncertainty. Rowland et al.'s recent revision of the GERG model reduced the maximum deviations by (17-35)%. Further optimizations should improve the constituent binary departure functions and hence improve the description of multicomponent VLE data, particularly at conditions relevant to LNG production. (C) 2017 Elsevier Ltd.

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