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Asbestos containing materials detection and classification by the use of hyperspectral imaging

•Innovative hyperspectral imaging based approach for asbestos fibers detection.•Asbestos fibers identification and classification obtained coupling HSI with chemometrics.•No sample preparation required, differently from classical analytical techniques.•The proposed HSI approach can be applied both “...

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Published in:Journal of hazardous materials 2018-02, Vol.344, p.981-993
Main Authors: Bonifazi, Giuseppe, Capobianco, Giuseppe, Serranti, Silvia
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description •Innovative hyperspectral imaging based approach for asbestos fibers detection.•Asbestos fibers identification and classification obtained coupling HSI with chemometrics.•No sample preparation required, differently from classical analytical techniques.•The proposed HSI approach can be applied both “in situ” and/or at “laboratory scale”.•The technique is environmental and safety friendly. In this work, hyperspectral imaging in the short wave infrared range (SWIR: 1000–2500nm) coupled with chemometric techniques was evaluated as an analytical tool to detect and classify different asbestos minerals, such as amosite ((Fe2+)2(Fe2+,Mg)5Si8O22(OH)2)), crocidolite (Na2(Mg,Fe)6Si8O22(OH)2) and chrysotile (Mg3(Si2O5)(OH)4), contained in cement matrices. Principal Component Analysis (PCA) was used for data exploration and Soft Independent Modeling of Class Analogies (SIMCA) for sample classification. The classification model was built using spectral characteristics of reference asbestos samples and then applied to the asbestos containing materials. Results showed that identification and classification of amosite, crocidolite and chrysotile was obtained based on their different spectral signatures, mainly related to absorptions detected in the hydroxyl combination bands, such as Mg-OH (2300nm) and Fe-OH (from 2280 to 2343nm). The developed SIMCA model showed very good specificity and sensitivity values (from 0.89 to 1.00). The correctness of classification results was confirmed by stereomicroscopic investigations, based on different color, morphological and morphometrical characteristics of asbestos minerals, and by micro X-ray fluorescence maps, through iron (Fe) and magnesium (Mg) distribution assessment on asbestos fibers. The developed innovative approach could represent an important step forward to detect asbestos in building materials and demolition waste.
doi_str_mv 10.1016/j.jhazmat.2017.11.056
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subjects Asbestos
Construction materials
Hyperspectral imaging
Micro X-ray fluorescence
Mineral fibers
title Asbestos containing materials detection and classification by the use of hyperspectral imaging
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