A Machine Learning Based Downscaling Approach to Produce High Spatio-Temporal Resolution Land Surface Temperature of the Antarctic Dry Valleys from MODIS Data

Lezama Valdes, M; Katurji, M; Meyer, H

Research article (journal) | Peer reviewed

Abstract

To monitor environmental and biological processes, Land Surface Temperature (LST) is a central variable, which is highly variable in space and time. This particularly applies to the Antarctic Dry Valleys, which host an ecosystem highly adapted to the extreme conditions in this cold desert. To predict possible climate induced changes on the Dry Valley ecosystem, high spatial and temporal resolution environmental variables are needed. Thus we enhanced the spatial resolution of the MODIS satellite LST product that is sensed sub-daily at a 1 km spatial resolution to a 30 m spatial resolution. We employed machine learning models that are trained using Landsat 8 thermal infrared data from 2013 to 2019 as a reference to predict LST at 30 m resolution. For the downscaling procedure, terrain derived variables and information on the soil type as well as the solar insolation were used as potential predictors in addition to MODIS LST. The trained model can be applied to all available MODIS scenes from 1999 onward to develop a 30 m resolution LST product of the Antarctic Dry Valleys. A spatio-temporal validation revealed an R2of 0.78 and a RMSE of 3.32°C. The downscaled LST will provide a valuable surface climate data set for various research applications, such as species distribution modeling, climate model evaluation, and the basis for the development of further relevant environmental information such as the surface moisture distribution.

Details about the publication

JournalRemote Sensing (Remote Sens.)
Volume13
Issue22
StatusPublished
Release year2021 (19/11/2021)
Language in which the publication is writtenEnglish
DOI10.3390/rs13224673
Link to the full texthttps://www.mdpi.com/2072-4292/13/22/4673
Keywordsdownscaling; Land Surface Temperature; Antarctica; McMurdo Dry Valleys; MODIS; machine learning

Authors from the University of Münster

Lezama Valdes, Lilian-Maite
Professorship of Remote Sensing and Spatial Modelling
Meyer, Hanna
Professorship of Remote Sensing and Spatial Modelling