Volcanic cloud detection using Sentinel-3 satellite data by means of neural networks: the Raikoke 2019 eruption test case
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Published:2022-12-14
Issue:24
Volume:15
Page:7195-7210
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ISSN:1867-8548
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Container-title:Atmospheric Measurement Techniques
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language:en
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Short-container-title:Atmos. Meas. Tech.
Author:
Petracca IlariaORCID, De Santis DavideORCID, Picchiani Matteo, Corradini Stefano, Guerrieri Lorenzo, Prata Fred, Merucci Luca, Stelitano Dario, Del Frate Fabio, Salvucci Giorgia, Schiavon Giovanni
Abstract
Abstract. Accurate automatic volcanic cloud detection by means of satellite data is a
challenging task and is of great concern for both the scientific community and
aviation stakeholders due to well-known issues generated by strong eruption
events in relation to aviation safety and health impacts. In this context,
machine learning techniques applied to satellite data acquired from recent
spaceborne sensors have shown promising results in the last few years. This work focuses on the application of a neural-network-based model to
Sentinel-3 SLSTR (Sea and Land Surface Temperature Radiometer) daytime
products in order to detect volcanic ash plumes generated by the 2019
Raikoke eruption. A classification of meteorological clouds and of other
surfaces comprising the scene is also carried out. The neural network has
been trained with MODIS (Moderate Resolution Imaging Spectroradiometer)
daytime imagery collected during the 2010 Eyjafjallajökull eruption. The
similar acquisition channels of SLSTR and MODIS sensors and the comparable
latitudes of the eruptions permit an extension of the approach to SLSTR,
thereby overcoming the lack in Sentinel-3 products collected in previous
mid- to high-latitude eruptions. The results show that the neural network model
is able to detect volcanic ash with good accuracy if compared to RGB
visual inspection and BTD (brightness temperature difference) procedures.
Moreover, the comparison between the ash cloud obtained by the neural
network (NN) and a plume mask manually generated for the specific SLSTR
images considered shows significant agreement, with an F-measure of around
0.7. Thus, the proposed approach allows for an automatic image classification
during eruption events, and it is also considerably faster than
time-consuming manual algorithms. Furthermore, the whole image classification indicates the overall reliability of the algorithm, particularly for recognition and discrimination between volcanic clouds and other objects.
Funder
European Space Agency
Publisher
Copernicus GmbH
Subject
Atmospheric Science
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