4.6 Article

Composition analysis of natural gas by combined benchtop NMR spectroscopy and mechanistical multivariate regression

Journal

ENERGY REPORTS
Volume 8, Issue -, Pages 3661-3670

Publisher

ELSEVIER
DOI: 10.1016/j.egyr.2022.02.289

Keywords

Energy management; Natural gas quantification; Nuclear Magnetic Resonance; High-pressure; Indirect Hard Modeling

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Funding

  1. Equinor
  2. Gassco
  3. Baker-Hughes

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This study demonstrates that benchtop NMR combined with chemometrics can reliably and quickly quantify complex hydrocarbon-gas mixtures.
Natural gas is an essential energy source for a large variety of applications in today's society. Forecasts predict that it will also play a vital role in decarbonizing the energy sector. The price of natural gas is determined by its calorific value, which depends on its composition. Thus, the accurate composition quantification of natural gas is essential to both producers and consumers. In this context, proton Nuclear Magnetic Resonance (NMR) spectra of pure and mixed hydrocarbon gases have been studied with a desktop spectrometer in the range between 1 to 200 bar. Although spectral linewidth, chemical shift, and relaxation times depend on pressure and composition, the hydrocarbon concentrations of binary, ternary, and an eleven-component gas mixture could be quantified by spectral analysis using Spectral Hard Modeling, a mechanistical multivariate regression. Concentrations determined for the main components at 200 bar by NMR deviated by 0.1 to 0.18 mol% from Gas Chromatography values, leading to a difference in calorific values of only 0.15%. The presented results demonstrate that benchtop NMR combined with chemometrics can quantify complex hydrocarbon-gas mixtures reliably and quickly. (C) 2022 The Author(s). Published by Elsevier Ltd.

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