Detecting Volcanic Ash Plume Components from Space using Machine
Learning Techniques
Abstract
During an explosive eruption, large volumes of ash and gases are ejected
into the atmosphere, forming a volcanic plume which is transported by
the wind. The dispersion of volcanic ash in atmosphere represents a
threat for aviation safety, whereas the tephra fallout, together with
gas emission, may strongly affect population health and damage to
environment and infrastructure as well. Volcanic monitoring from space
offers now a powerful tool to quantify hazards on both population and
air traffic and gain insight into processes and mechanism of violent
explosive eruptions. Here we propose a machine learning (ML) algorithm
that exploits the Thermal Infrared (TIR) bands of the images acquired by
the sensor Spinning Enhanced Visible and InfraRed Imager (SEVIRI), on
board Meteosat Second Generation (MSG) geostationary satellite, to
identify the components of ash and SO2 gas in a volcanic plume. The
detection and assessment of volcanic ash clouds has been performed
applying the brightness temperature difference (BTD) approach, between
bands at 10.8 μm and 12.0 μm, which highlights the presence of thin
volcanic ash, while the algorithm for the SO2 retrieval is based on the
contributions given by the bands at 10.8 μm and 8.7 μm. Combining the
latter two bands with the 10.8 μm band in the RGB channels, it is
possible to create an Ash RGB image, used both day and night for the
detection and monitoring of volcanic ash and sulphur dioxide gas. The
advantage of the machine learning algorithm is to detect and extract
automatically these features from an Ash RGB image. As test cases, we
considered the sequence of explosive eruptions occurred at Etna volcano
(Italy) in early 2021, which produced very long and high plume columns.
Thanks to the high temporal resolution of SEVIRI (one image every 15
minutes), it was possible to visualize and to follow the plumes, from
their formation to their complete dispersion in the atmosphere. The
comparison of our ML algorithm with the consolidated procedure based on
a RGB channels combination in the visible (VIS) spectral range showed a
good agreement.