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On the benefits of using multivariate analysis in mass spectrometric studies of combustion-generated aerosols (CROSBI ID 310882)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Duca, D. ; Irimiea, C. ; Faccinetto, A. ; Noble, J. A. ; Vojkovic, M. ; Carpentier, Y. ; Ortega, I. K. ; Pirim, C. ; Focsa, C. On the benefits of using multivariate analysis in mass spectrometric studies of combustion-generated aerosols // FARADAY DISCUSSIONS, 218 (2019), 115-137. doi: 10.1039/c8fd00238j

Podaci o odgovornosti

Duca, D. ; Irimiea, C. ; Faccinetto, A. ; Noble, J. A. ; Vojkovic, M. ; Carpentier, Y. ; Ortega, I. K. ; Pirim, C. ; Focsa, C.

engleski

On the benefits of using multivariate analysis in mass spectrometric studies of combustion-generated aerosols

The intricate chemistry of the carbonaceous particle surface layer (which drives their reactivity, environmental and health impacts) results in complex mass spectra. In this respect, detailed molecular-level analysis of combustion emissions may be challenging even with high- resolution mass spectrometry. Building on a recently proposed comprehensive methodology (encompassing all stages from sampling to data reduction), we propose herein a comparative analysis of soot particles produced by three different sources: a miniCAST standard generator, a laboratory diffusion flame and a single cylinder internal combustion engine. The surface composition is probed by either laser or secondary ion mass spectrometry. Two examples of multivariate analysis, Principal component analysis and hierarchical clustering analysis proved their efficiency in both identifying general trends and evidencing subtle differences that otherwise would remain unnoticed in the plethora of data generated during mass spectrometric analyses. Chemical information extracted from these multivariate statistical procedures contributes to a better understanding of fundamental combustion processes and also opens to practical applications such as the tracing of engine emissions.

combustion ; soot ; particles ; multivariate analysis ; trace analysis ; environment

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Podaci o izdanju

218

2019.

115-137

objavljeno

1359-6640

10.1039/c8fd00238j

Povezanost rada

Povezane osobe



Fizika, Interdisciplinarne prirodne znanosti, Kemija

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