Publication Details

Category Data Publication
DOI 10.4121/b26f4168-6359-4257-8ef2-3362d6bc6593
Licence creative commons licence
Title (Primary) Data supporting the paper "Modelling gross primary productivity across different ecosystem types"
Author Spinosa, A.; Karisma, K.; Eleveld, M.A.; Fuentes-Monjaraz, M.A.; Mobilia, V.; Mallast, U.; Peterseil, J.; El Serafy, G.
Source Titel 4TU.ResearchData
Year 2026
Department MET
Language englisch
Topic T5 Future Landscapes
Abstract Predicting Gross Primary Productivity (GPP) is key for understanding ecosystem health and quantifying the global carbon cycle. While data-driven models have shown strong performance in capturing GPP dynamics at specific sites, their ability to generalize across ecosystems without site-specific recalibration remains largely untested. This study addresses this gap by evaluating the applicability of XGBoost and LSTM models in estimating GPP across different European ecosystems. We developed a unified (cross-site) modeling framework that integrates in-situ eddy covariance observations and Sentinel-2–derived vegetation indices using incremental learning. Models’ performance was assessed via: (i) site-specific models, developed to capture individual site characteristics, and (ii) cross-site generalization, including evaluation on an independent dataset of unseen ecosystems. SARIMAX is included as a site-specific statistical benchmark for comparison. Our findings indicate that XGBoost consistently outperformed the other models, achieving site-specific R2 values above 0.90 in forest and grassland ecosystems and an average Rof 0.72 across unseen sites (range 0.66–0.78). LSTM exhibited better accuracy in predicting GPP peaks at site-specific level, particularly in cropland and forest ecosystems. At site-level, SARIMAX showed comparable performance to XGBoost but struggled in capturing the rapid temporal variation of GPP. These findings demonstrate the feasibility of a data-driven framework for cross-site GPP monitoring within European flux-tower networks, making a first step toward transferable GPP prediction without site-specific recalibration.
linked UFZ text publications
Spinosa, A., Karisma, K., Eleveld, M.A., Fuentes-Monjaraz, M.A., Mobilia, V., Mallast, U., Peterseil, J., El Serafy, G. (2026):
Data supporting the paper "Modelling gross primary productivity across different ecosystem types"
4TU.ResearchData
10.4121/b26f4168-6359-4257-8ef2-3362d6bc6593