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Original Articles

Mass Spectrometric Advances in the Analysis of Large Aromatic Fractions of Heavy Fuel Oils and Carbon Particulates

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Pages 640-652 | Received 23 Mar 2009, Accepted 12 Oct 2009, Published online: 02 Jun 2010
 

Abstract

Advanced mass spectrometric systems have been tested for the analysis of heavy fractions of fuel oils and combustion-formed particulate in terms of mass range detection and resolution. The analysis of these complex aromatic samples is not amenable to conventional chromatographic–mass spectrometric techniques due to their low volatility and degradability. In this paper, the advantages and the shortcomings of different ionization methods (electron impact, photoionization, laser ionization) and different mass analyzers (quadrupole, ion trap, time of flight) have been carefully investigated. The optimization of operative parameters has shown to be crucial for the extension of mass detection range. The Atmospheric Pressure Photoionization–Mass Spectrometry techniques showed the best performances in terms of low fragmentation of the parent ion and sensitivity for the analysis of asphaltenes. Laser Desorption Ionization–Mass Spectrometry showed to be more suitable for the analysis of aromatic tarry combustion-formed species.

ACKNOWLEDGMENTS

The research was carried out with the financial support of the MSE-CNR project on “Carbone Pulito” 2006.

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