Machine learning algorithms applied to Raman spectra for the identification of variscite originating from the mining complex of Gavà

Variscite is an aluminium phosphate mineral widely used as a gemstone in antiquity. Knowledge of the ancient trade in variscite has important implications on the historical appreciation of the commercial and migratory movements of human population. The mining complex of Gavà, which dates from the Ne...

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Detalles Bibliográficos
Autores: Díez-Pastor, José Francisco, Esther, Susana, Arnaiz-González, Álvar, García-Osorio, César Ignacio, Díaz-Acha, Yael, Campeny, Marc, Bosch, Josep, Melgarejo, Joan Carles
Tipo de recurso: artículo
Fecha de publicación:2018
País:España
Institución:Ajuntament de Barcelona
Repositorio:BCNROC. Repositori Obert de Coneixement de l'Ajuntament de Barcelona
OAI Identifier:oai:bcnroc.ajuntament.barcelona.cat:11703/120666
Acceso en línea:http://hdl.handle.net/2072/375927
https://doi.org/10.1002/jrs.5509
http://hdl.handle.net/11703/120666
Access Level:acceso abierto
Palabra clave:Espectroscòpia Raman
Gavà (Catalunya)
Can Tintorer (Gavà, Catalunya : Jaciment arqueològic)
Variscita
Fosfats
Pedres precioses
549
Ciència i tecnologia
articles
Descripción
Sumario:Variscite is an aluminium phosphate mineral widely used as a gemstone in antiquity. Knowledge of the ancient trade in variscite has important implications on the historical appreciation of the commercial and migratory movements of human population. The mining complex of Gavà, which dates from the Neolithic, is one of the oldest underground mine sites in Europe, from where variscite was extracted from several mines and at different depths, providing minerals with different properties and a range of colours. In this work, Machine Learning algorithms have been used to classify variscite samples from Gavà with regard to the identification of their mine of origin and extraction depth. The final objective of the study was to see if the Raman spectroscopic signatures selected by these algorithms had a key spectral significance related to mineral structure and/or composition and validating the use of these computational procedures as a useful tool for detecting variances in the mineral Raman spectra that could facilitate the assignment of the specimens to each mine. Keywords: Archaeometry, Mineral classification, Raman spectroscopy, High Dimensional Data, Neolithic mines of Gavà.