Spatiotemporal downscaling and nowcasting of urban land surface temperatures with deep neural networks

Journal Article (2026)
Author(s)

Solomiia Kurchaba (Bern University of Applied Sciences, TU Delft - Civil Engineering & Geosciences)

Angela Meyer (Bern University of Applied Sciences, TU Delft - Civil Engineering & Geosciences)

Research Group
Atmospheric Remote Sensing
DOI related publication
https://doi.org/10.1109/ACCESS.2026.3700054 Final published version
More Info
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Publication Year
2026
Language
English
Research Group
Atmospheric Remote Sensing
Journal title
IEEE Access
Volume number
14
Pages (from-to)
85134-85151
Downloads counter
5
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Abstract

Land Surface Temperature (LST) is a key variable for various applications, such as urban climate and ecology studies. Yet, existing satellite-derived LST products provide either high spatial or high temporal resolution, resulting in a fundamental trade-off between the two. To address this trade-off, we combine observations from a geostationary and a polar orbiting satellite and provide LST fields at high spatial and high temporal resolution (1 km at 15-min intervals).We demonstrate their application for intraday forecasting of LSTs. To estimate LST fields at high spatiotemporal resolution, a U-Net model is trained to map LST fields from SEVIRI/MSG (3 km and 15 min resolution) to LST fields from Terra/Aqua MODIS (1 km, 4 overpasses per day) that are collocated in space and time. The presented model has been trained on LSTs across large European cities with a population exceeding 1 million inhabitants, and achieves an RMSE = 1.92 °C and near-zero bias MBE = 0.01 °C on the hold-out test set. As a second step, we present an LST nowcasting model based on ConvLSTM architecture, trained across downscaled LST fields with forecast lead times of 15 to 75 minutes. The nowcasting model outperforms a persistence and a Climatological Rolling Median benchmarks, with RMSEs of 0.57 to 1.15 °C for the considered lead times and biases ranging from −0.1 to 0.14 °C. An additional validation conducted against independent MODIS overpasses confirms robust performance. Our LST forecast model at high spatiotemporal resolution is directly applicable to operational satellite-based LST monitoring.