Mapping and classification of volcanic deposits using multi-sensor unoccupied aerial systems

Carr, Brett B. and Lev, Einat and Sawi, Theresa and Bennett, Kristen A. and Edwards, Christopher S. and Soule, S. Adam and Vargas, Silvia Vallejo and Marliyani, Gayatri Indah (2021) Mapping and classification of volcanic deposits using multi-sensor unoccupied aerial systems. REMOTE SENSING OF ENVIRONMENT, 264. ISSN 0034-4257

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Abstract

The deposits from volcanic eruptions represent the record of activity at a volcano. Identification, classification, and interpretation of these deposits are crucial to the understanding of volcanic processes and assessing hazards. However, deposits often cover large areas and can be difficult or dangerous to access, making field mapping hazardous and time-consuming. Remote sensing techniques are often used to map and identify the deposits of volcanic eruptions, though these techniques present their own trade-offs in terms of image resolution, wavelength, and observation frequency. Here, we present a new approach for mapping and classifying volcanic deposits using a multi-sensor unoccupied aerial system (UAS) and demonstrate its application on lava and tephra deposits associated with the 2018 eruption of Sierra Negra volcano (Gal ` apagos Archipelago, Ecuador). We surveyed the study area and collected visible and thermal infrared (TIR) images. We used structure-from-motion photogrammetry to create a digital elevation model (DEM) from the visual images and calculated the solar heating rate of the surface from temperature maps based on the TIR images. We find that the solar heating rate is highest for tephra deposits and lowest for Modified Letter Turned CommaaModified Letter Turned Commaa over bar lava, with pa over bar hoehoe lava having intermediate values. This is consistent with the solar heating rate correlating to the density and particle size of the surface. The solar heating rate for the lava flow also decreases with increasing distance from the vent, consistent with an increase in density as the lava degasses. We combined the surface roughness (calculated from the DEM) and the solar heating rate of the surface to remotely classify tephra deposits and different lava morphologies. We applied both supervised and unsupervised machine learning algorithms. A supervised classification method can replicate the manual classification while the unsupervised method can identify major surface units with no ground truth information. These methods allow for remote mapping and classification at high spatial resolution (< 1 m) of a variety of volcanic deposits, with potential for application to deposits from other processes (e.g., fluvial, glacial) and deposits on other planetary bodies.

Item Type: Article
Uncontrolled Keywords: Thermal remote sensing; Unoccupied aerial systems (UAS); Lava flows; Land surface classification; Mapping of volcanic deposits
Subjects: Q Science > QE Geology
Divisions: Faculty of Engineering > Geological Engineering Department
Depositing User: Sri JUNANDI
Date Deposited: 14 Oct 2024 03:52
Last Modified: 14 Oct 2024 03:52
URI: https://ir.lib.ugm.ac.id/id/eprint/9385

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