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Petroleum Chemistry

, Volume 59, Issue 1, pp 34–47 | Cite as

Application of Multidimensional Analysis Methods to Dead Oil Characterization on the Basis of Data on Thermal Field-Flow Fractionation of Native Asphaltene Nanoparticles

  • E. A. NovikovEmail author
  • Yu. A. Sergeev
  • V. V. Sanzharov
  • R. Z. SafievaEmail author
  • V. A. Vinokurov
Article
  • 4 Downloads

Abstract

Molecular-mass distribution curves of native nanoasphaltenes in the form of fractograms for a significant sample of crude oils have been obtained using the thermal field-flow fractionation of asphaltenes, and a multidimensional analysis of the fractionation data has been carried out in order to construct calibration models for predicting the physicochemical properties of the studied oils.

Keywords:

asphaltene nanoparticles temperature field dead oils multidimensional analysis 

Notes

ACKNOWLEDGMENTS

The authors thank the Middle-Volga Research Institute of Oil Processing SV NIINP for providing oil samples and Postnova Analytics for providing the opportunity to work on the ThFFF equipment.

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Copyright information

© Pleiades Publishing, Ltd. 2019

Authors and Affiliations

  1. 1.Gubkin Russian State University of Oil and Gas (National Research University)MoscowRussia

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