Baumberger M; Haas B; Tewes W; Risse B; Meyer N; Meyer H
Forschungsartikel (Zeitschrift) | Peer reviewedSoil temperature and moisture are important variables controlling ecological processes, but continuous high-resolution data are rarely available. Therefore, we used the correlation with widely accessible meteorological variables, including air temperature and precipitation, to develop models that predict time series of soil temperature and moisture. To model high-resolution time series, predictor and target variables had a temporal resolution of 1 h. We tested the applicability of Gated Recurrent Units with time series from one exemplary site. The models showed a high predictability on the four years test set with a mean absolute error of 0.87 °C for soil temperature and 3.20% volumetric water content for soil moisture. We further investigated the plausibility of the models by passing simplified synthetic data to the trained models and thereby proved their ability to reflect known processes. Finally, we showed the potential to apply the models to other sites and soil depths using transfer learning.
Baumberger, Maiken | Professur für Remote Sensing und Spatial Modelling (Prof. Meyer) |
Meyer, Hanna | Professur für Remote Sensing und Spatial Modelling (Prof. Meyer) |
Risse, Benjamin | Professur für Geoinformatics for Sustainable Development (Prof. Risse) |