Partial least squares modeling of combined infrared, H-1 NMR and C-13 NMR spectra to predict long residue properties of crude oils

Peter de Peinder, Tom Visser, Derek D. Petrauskas, Fabien Salvatori, Fouad Soulimani, Bert M. Weckhuysen

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

Research has been carried out to determine the potential of partial least squares (PLS) modeling of mid-infrared (IR) spectra of crude oils combined with the corresponding H-1 and C-13 nuclear magnetic resonance (NMR) data, to predict the long residue (LR) properties of these substances. The study elaborates further on a recently developed and patented method to predict this type of information from only IR spectra. In the present study, PLS modeling was carried out for 7 different LR properties, i.e., yield long-on-crude (YLC), density (D-LR), Viscosity (V-LR), sulfur content (S), pour point (PP), asphaltenes (Asph) and carbon residue (CR). Research was based on the spectra of 48 crude oil samples of which 28 were used to build the PLS models and the remaining 20 for validation. For each property, PUS modeling was carried out on single type IR, C-13 NMR and H-1 NMR spectra and on 3 sets of merged spectra, i.e., IR + H-1 NMR, IR + C-13 NMR and IR + H-1 NMR + C-13 NMR. The merged spectra were created by considering the NMR data as a scaled extension of the IR spectral region. In addition, PLS modeling of coupled spectra was performed after a Principal Component Analysis (PCA) of the IR, C-13 NMR and H-1 NMR calibration sets. For these models, the 10 most relevant PCA scores of each set were concatenated and scaled prior to PLS modeling. The validation results of the individual IR models, expressed as root-mean-square-error-of-prediction (RMSEP) values, turned out to be slightly better than those obtained for the models using single input C-13 NMR or H-1 NMR data. For the models based on IR spectra combined with NMR data, a significant improvement of the RMSEP values was not observed neither for the models based on merged spectra nor for those based on the PCA scores. It implies, that the commonly accepted complementary character of NMR and IR is, at least for the crude oil and bitumen samples under study, not reflected in the results of PLS modeling. Regarding these results, the absence of sample preparation and the straightforward way of data acquisition, IR spectroscopy is preferred over NMR for the prediction of LR properties of crude oils at site. (C) 2009 Elsevier B.V. All rights reserved.
Original languageEnglish
Pages (from-to)205-212
Number of pages8
JournalVibrational Spectroscopy
Volume51
Issue number2
DOIs
Publication statusPublished - 10 Nov 2009

Keywords

  • Bitumen
  • Chemometrics
  • Pls
  • Property prediction

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