Quantifying silica in filter-deposited mine dusts using infrared spectra and partial least squares regression
The feasibility of measuring airborne crystalline silica (α-quartz) in noncoal mine dusts using a direct-on-filter method of analysis is demonstrated. Respirable α-quartz was quantified by applying a partial least squares (PLS) regression to the infrared transmission spectra of mine-dust samples dep...
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Veröffentlicht in: | Analytical and bioanalytical chemistry 2014-07, Vol.406 (19), p.4715-4724 |
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Sprache: | eng |
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Zusammenfassung: | The feasibility of measuring airborne crystalline silica (α-quartz) in noncoal mine dusts using a direct-on-filter method of analysis is demonstrated. Respirable α-quartz was quantified by applying a partial least squares (PLS) regression to the infrared transmission spectra of mine-dust samples deposited on porous polymeric filters. This direct-on-filter method deviates from the current regulatory determination of respirable α-quartz by refraining from ashing the sampling filter and redepositing the analyte prior to quantification using either infrared spectrometry for coal mines or x-ray diffraction (XRD) from noncoal mines. Since XRD is not field portable, this study evaluated the efficacy of Fourier transform infrared spectrometry for silica determination in noncoal mine dusts. PLS regressions were performed using select regions of the spectra from nonashed samples with important wavenumbers selected using a novel modification to the Monte Carlo unimportant variable elimination procedure. Wavenumber selection helped to improve PLS prediction, reduce the number of required PLS factors, and identify additional silica bands distinct from those currently used in regulatory enforcement. PLS regression appeared robust against the influence of residual filter and extraneous mineral absorptions while outperforming ordinary least squares calibration. These results support the quantification of respirable silica in noncoal mines using field-portable infrared spectrometers.
Figure
Partial least square's predicted (Y
fit
) vs. observed (Y
obs
) reparable silica using infrared absorbance from the α-quartz doublet region of filter-deposited mine dust sample spectra. predictive features selected via backward Monte Carlo unimportant variable elimination (lower right hand corner) are also shown |
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ISSN: | 1618-2642 1618-2650 |
DOI: | 10.1007/s00216-014-7856-y |