Machine Learning in Discriminating Active Volcanoes of the Hellenic Volcanic Arc

Identifying the provenance of volcanic rocks can be essential for improving geological maps in the field of geology and providing a tool for the geochemical fingerprinting of ancient artifacts like millstones and anchors in the field of geoarchaeology. This study examines a new approach to this prob...

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Main Authors: Athanasios G. Ouzounis, George A. Papakostas
Format: Article
Language:English
Published: MDPI AG 2021-09-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/11/18/8318
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spelling doaj-cae2664fc8e44867aef4248031f219842021-09-25T23:39:10ZengMDPI AGApplied Sciences2076-34172021-09-01118318831810.3390/app11188318Machine Learning in Discriminating Active Volcanoes of the Hellenic Volcanic ArcAthanasios G. Ouzounis0George A. Papakostas1HUMAIN-Lab, Department of Computer Science, International Hellenic University, 65404 Kavala, GreeceHUMAIN-Lab, Department of Computer Science, International Hellenic University, 65404 Kavala, GreeceIdentifying the provenance of volcanic rocks can be essential for improving geological maps in the field of geology and providing a tool for the geochemical fingerprinting of ancient artifacts like millstones and anchors in the field of geoarchaeology. This study examines a new approach to this problem by using machine learning algorithms (MLAs). In order to discriminate the four active volcanic regions of the Hellenic Volcanic Arc (HVA) in Southern Greece, MLAs were trained with geochemical data of major elements, acquired from the GEOROC database, of the volcanic rocks of the Hellenic Volcanic Arc (HVA). Ten MLAs were trained with six variations of the same dataset of volcanic rock samples originating from the HVA. The experiments revealed that the Extreme Gradient Boost model achieved the best performance, reaching 93.07% accuracy. The model developed in the framework of this research was used to implement a cloud-based application which is publicly accessible at This application can be used to predict the provenance of a volcanic rock sample, within the area of the HVA, based on its geochemical composition, easily obtained by using the X-ray fluorescence (XRF) technique.https://www.mdpi.com/2076-3417/11/18/8318machine learningHellenic Volcanic Arcgeochemistrygeoarchaeologygeochemical fingerprinting
collection DOAJ
language English
format Article
sources DOAJ
author Athanasios G. Ouzounis
George A. Papakostas
spellingShingle Athanasios G. Ouzounis
George A. Papakostas
Machine Learning in Discriminating Active Volcanoes of the Hellenic Volcanic Arc
Applied Sciences
machine learning
Hellenic Volcanic Arc
geochemistry
geoarchaeology
geochemical fingerprinting
author_facet Athanasios G. Ouzounis
George A. Papakostas
author_sort Athanasios G. Ouzounis
title Machine Learning in Discriminating Active Volcanoes of the Hellenic Volcanic Arc
title_short Machine Learning in Discriminating Active Volcanoes of the Hellenic Volcanic Arc
title_full Machine Learning in Discriminating Active Volcanoes of the Hellenic Volcanic Arc
title_fullStr Machine Learning in Discriminating Active Volcanoes of the Hellenic Volcanic Arc
title_full_unstemmed Machine Learning in Discriminating Active Volcanoes of the Hellenic Volcanic Arc
title_sort machine learning in discriminating active volcanoes of the hellenic volcanic arc
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2021-09-01
description Identifying the provenance of volcanic rocks can be essential for improving geological maps in the field of geology and providing a tool for the geochemical fingerprinting of ancient artifacts like millstones and anchors in the field of geoarchaeology. This study examines a new approach to this problem by using machine learning algorithms (MLAs). In order to discriminate the four active volcanic regions of the Hellenic Volcanic Arc (HVA) in Southern Greece, MLAs were trained with geochemical data of major elements, acquired from the GEOROC database, of the volcanic rocks of the Hellenic Volcanic Arc (HVA). Ten MLAs were trained with six variations of the same dataset of volcanic rock samples originating from the HVA. The experiments revealed that the Extreme Gradient Boost model achieved the best performance, reaching 93.07% accuracy. The model developed in the framework of this research was used to implement a cloud-based application which is publicly accessible at This application can be used to predict the provenance of a volcanic rock sample, within the area of the HVA, based on its geochemical composition, easily obtained by using the X-ray fluorescence (XRF) technique.
topic machine learning
Hellenic Volcanic Arc
geochemistry
geoarchaeology
geochemical fingerprinting
url https://www.mdpi.com/2076-3417/11/18/8318
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