Supervised classification of the Magdalena VMS deposit using Support Vector Machines. Drillcore scanning using SWIR hyperspectral imagery
de Waard, Robbert
Promoteur(s) : Pirard, Eric
Date de soutenance : 20-aoû-2019 • URL permanente : http://hdl.handle.net/2268.2/8517
Détails
Titre : | Supervised classification of the Magdalena VMS deposit using Support Vector Machines. Drillcore scanning using SWIR hyperspectral imagery |
Auteur : | de Waard, Robbert |
Date de soutenance : | 20-aoû-2019 |
Promoteur(s) : | Pirard, Eric |
Membre(s) du jury : | Nguyen, Frédéric
Gloaguen, Richard |
Langue : | Anglais |
Nombre de pages : | 128 |
Mots-clés : | [en] ANCORELOG [en] Automated drillcore scanning' [en] Hyperspectral [en] SWIR [en] Support vector machines [en] SVM |
Discipline(s) : | Ingénierie, informatique & technologie > Géologie, ingénierie du pétrole & des mines |
Intitulé du projet de recherche : | ANCORELOG |
Public cible : | Chercheurs Professionnels du domaine Etudiants |
Institution(s) : | Université de Liège, Liège, Belgique |
Diplôme : | Master en ingénieur civil des mines et géologue, à finalité spécialisée en "geometallurgy (EMERALD)" |
Faculté : | Mémoires de la Faculté des Sciences appliquées |
Résumé
[en] The development of automated core-logging holds great potential for the improvement of core-logging procedures within the mining industry. This thesis was part of ANCORELOG, a research project that is developing automated cores-scanning technology using hyperspectral imaging, XRF, XRT and LIBS.
This work was focussed on conducting lithological classifications using support vector machine algorithms based on SWIR images of a large set of cores provided from the Magdalena mine of MATSA in the Iberian pyrite belt of Spain. Average classification accuracies of up to 73% have been achieved at a theoretical logging speed of approximately 30 meters of core per hour. It was concluded that SVM classification of SWIR images is not able to accurately classify all lithologies of Magdalena and that a simpler class-system should be developed based on properties discriminatory with SWIR. To improve results, future developments of the core-logging system should include additional sensor techniques. Furthermore, different machine learning algorithms such as artificial neural networks are more likely to achieve better results than SVM.
Secondly, efforts to create a direct correlation between alteration mineralogy and hyperspectral response were inconclusive. SEM EDX scans that were made did not produce accurate representations of chlorite or sericite concentrations and consequently made regressions meaningless. Additionally, template matching procedures to co-registrate SEM images with hyperspectral images proved to be more problematic than initially estimated. It required large amount of user-input and only 1 out of 4 samples could be matched with reasonable accuracy.
Finally, the wavelength position of the Al-OH absorption of sericite within samples was compared to its positioning relative to the orebody. A minor indication of the wavelength position shifting to shorter wavelengths when proximal to the orebody was found. A more detailed study to truly verify this correlation is recommended.
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