Automated Mapping of Lava: Classification of the Lava Flow Field from the 2021 Fagradalsfjall Eruption

In March 2021 an effusive eruption began in the Fagradalsfjall volcanic system in Iceland. It was the first in a new series of volcanic events on the Reykjanes Peninsula that threaten communities and infrastructure in the area. Near real-time mapping of the lava flow field is essential for hazard as...

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Bibliographic Details
Main Author: Caroline Montagnino Corona 2000-
Other Authors: Háskóli Íslands
Format: Master Thesis
Language:English
Published: 2024
Subjects:
Online Access:https://hdl.handle.net/1946/48652
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author Caroline Montagnino Corona 2000-
author2 Háskóli Íslands
author_facet Caroline Montagnino Corona 2000-
author_sort Caroline Montagnino Corona 2000-
collection Skemman (Iceland)
description In March 2021 an effusive eruption began in the Fagradalsfjall volcanic system in Iceland. It was the first in a new series of volcanic events on the Reykjanes Peninsula that threaten communities and infrastructure in the area. Near real-time mapping of the lava flow field is essential for hazard assessment during an eruption. This study aims to develop efficient automated mapping methods of lava flows that could be applied to future Reykjanes eruptions. Aerial photogrammetric data used to monitor the 2021 Fagradalsfjall eruption is utilized to develop and test classification workflows for mapping of both the lava flow field outline and lava channels. Pixel-level classification was first tested and determined to be sufficient for mapping the lava flow field outline based on favorable results. Orthomosaics and layers derived from Digital Elevation Models (DEMs) were used for training of a Random Forest classifier. Manually digitized outlines of the lava flow field were used as ground truth; the result is a binary classification (lava or not-lava). The unsupervised K-means algorithm could be added as an intermediate step to create a multi-class model. After training, the models were tested on the entire survey area and post-processing steps were performed to minimize error. This workflow was applied to both the 30 September post-eruptive survey and the 26 June syneruptive survey. The post-eruptive binary model achieves a 96.7% accuracy against the manually digitized ground truth, while the multi-class model achieves a 99.8% accuracy. The syn-eruptive binary model achieves a 98.6% accuracy, and the multi-class model achieves a 97.3% accuracy. In all cases, the classified outline follows the manual outline well. The multi-class model can correctly classify incandescent lava and lava with sulfur deposits. However, gas clouds present in the syn-eruptive survey negatively affect classification. The addition of a thermal layer was also tested by applying the workflow to the February 2024 Sundhnúkagígar eruption and ...
format Master Thesis
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Iceland
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spelling ftskemman:oai:skemman.is:1946/48652 2025-01-16T22:15:52+00:00 Automated Mapping of Lava: Classification of the Lava Flow Field from the 2021 Fagradalsfjall Eruption Caroline Montagnino Corona 2000- Háskóli Íslands 2024-10 application/pdf https://hdl.handle.net/1946/48652 en eng https://hdl.handle.net/1946/48652 Jarðeðlisfræði Fagradalsfjall (Gullbringusýsla) Hraunrennsli Thesis Master's 2024 ftskemman 2024-10-08T23:57:15Z In March 2021 an effusive eruption began in the Fagradalsfjall volcanic system in Iceland. It was the first in a new series of volcanic events on the Reykjanes Peninsula that threaten communities and infrastructure in the area. Near real-time mapping of the lava flow field is essential for hazard assessment during an eruption. This study aims to develop efficient automated mapping methods of lava flows that could be applied to future Reykjanes eruptions. Aerial photogrammetric data used to monitor the 2021 Fagradalsfjall eruption is utilized to develop and test classification workflows for mapping of both the lava flow field outline and lava channels. Pixel-level classification was first tested and determined to be sufficient for mapping the lava flow field outline based on favorable results. Orthomosaics and layers derived from Digital Elevation Models (DEMs) were used for training of a Random Forest classifier. Manually digitized outlines of the lava flow field were used as ground truth; the result is a binary classification (lava or not-lava). The unsupervised K-means algorithm could be added as an intermediate step to create a multi-class model. After training, the models were tested on the entire survey area and post-processing steps were performed to minimize error. This workflow was applied to both the 30 September post-eruptive survey and the 26 June syneruptive survey. The post-eruptive binary model achieves a 96.7% accuracy against the manually digitized ground truth, while the multi-class model achieves a 99.8% accuracy. The syn-eruptive binary model achieves a 98.6% accuracy, and the multi-class model achieves a 97.3% accuracy. In all cases, the classified outline follows the manual outline well. The multi-class model can correctly classify incandescent lava and lava with sulfur deposits. However, gas clouds present in the syn-eruptive survey negatively affect classification. The addition of a thermal layer was also tested by applying the workflow to the February 2024 Sundhnúkagígar eruption and ... Master Thesis Gullbringusýsla Iceland Skemman (Iceland) Reykjanes ENVELOPE(-22.250,-22.250,65.467,65.467) Gullbringusýsla ENVELOPE(-22.250,-22.250,63.917,63.917)
spellingShingle Jarðeðlisfræði
Fagradalsfjall (Gullbringusýsla)
Hraunrennsli
Caroline Montagnino Corona 2000-
Automated Mapping of Lava: Classification of the Lava Flow Field from the 2021 Fagradalsfjall Eruption
title Automated Mapping of Lava: Classification of the Lava Flow Field from the 2021 Fagradalsfjall Eruption
title_full Automated Mapping of Lava: Classification of the Lava Flow Field from the 2021 Fagradalsfjall Eruption
title_fullStr Automated Mapping of Lava: Classification of the Lava Flow Field from the 2021 Fagradalsfjall Eruption
title_full_unstemmed Automated Mapping of Lava: Classification of the Lava Flow Field from the 2021 Fagradalsfjall Eruption
title_short Automated Mapping of Lava: Classification of the Lava Flow Field from the 2021 Fagradalsfjall Eruption
title_sort automated mapping of lava: classification of the lava flow field from the 2021 fagradalsfjall eruption
topic Jarðeðlisfræði
Fagradalsfjall (Gullbringusýsla)
Hraunrennsli
topic_facet Jarðeðlisfræði
Fagradalsfjall (Gullbringusýsla)
Hraunrennsli
url https://hdl.handle.net/1946/48652