Publications of Basil Kraft
All genres
Journal Article (9)
1.
Journal Article
21 (22), pp. 5079 - 5115 (2024)
X-BASE: the first terrestrial carbon and water flux products from an extended data-driven scaling framework, FLUXCOM-X. Biogeosciences 2.
Journal Article
17 (17), pp. 6683 - 6701 (2024)
DeepPhenoMem V1.0: Deep learning modelling of canopy greenness dynamics accounting for multi-variate meteorological memory effects on vegetation phenology. Geoscientific Model Development 3.
Journal Article
24 (4), pp. 2555 - 2582 (2024)
Constraining biospheric carbon dioxide fluxes by combined top-down and bottom-up approaches. Atmospheric Chemistry and Physics 4.
Journal Article
11 (7), e2022EF003441 (2023)
Contrasting drought propagation into the terrestrial water cycle between dry and wet regions. Earth's Future 5.
Journal Article
27 (7), pp. 1531 - 1563 (2023)
Diagnosing modeling errors in global terrestrial water storage interannual variability. Hydrology and Earth System Sciences 6.
Journal Article
18, 034039 (2023)
Hybrid modeling of evapotranspiration: inferring stomatal and aerodynamic resistances using combined physics-based and machine learning. Environmental Research 7.
Journal Article
26 (6), pp. 1579 - 1614 (2022)
Towards hybrid modeling of the global hydrological cycle. Hydrology and Earth System Sciences 8.
Journal Article
XLIII-B2-2020, pp. 1537 - 1544 (2020)
Hybrid modeling: Fusion of a deep approach and physics-based model for global hydrological modeling. The International Archives of Photogrammetry, Remote Sensing and Spatial Information Sciences 9.
Journal Article
2, 31 (2019)
Identifying dynamic memory effects on vegetation state using recurrent neural networks. Frontiers in Big Data Book Chapter (3)
10.
Book Chapter
Combining system modeling and machine learning into hybrid ecosystem modeling. In: Knowledge-Guided Machine Learning, 9781003143376, pp. 327 - 352 (Eds. Kannan, R.; Kumar, V.). Chapman & Hall, London (2022)
11.
Book Chapter
Reichstein, M.). John Wiley & Sons Ltd, Hoboken, New Jersey (2021)
Emulating ecological memory with recurrent neural networks. In: Deep Learning for the Earth Sciences: A Comprehensive Approach to Remote Sensing, Climate Science, and Geosciences, pp. 269 - 281 (Eds. Camps-Valls, G.; Tuia, D.; Zhu, X. X.; 12.
Book Chapter
Predicting landscapes from environmental conditions using generative networks. In: Pattern Recognition, DAGM GCPR 2019, pp. 203 - 217 (Eds. FInk, G. A.; Frintrop, S.; Jiang, X.). Springer, Cham (2019)
Conference Paper (2)
13.
Conference Paper
Modelling landsurface time-series with recurrent neural nets. In: 2018 IEEE International geoscience and remote sensing symposium (IGARSS), pp. 7640 - 7643. Valencia, 2018 (2018)
14.
Conference Paper
Predicting landscapes as seen from space from environmental conditions. In: 2018 IEEE International Geoscience and Remote Sensing Symposium (IGARSS), pp. 1768 - 1771. (2018)
Thesis - PhD (1)
15.
Thesis - PhD
Deep learning and hybrid modeling of global vegetation and hydrology. Dissertation, Technical University of Munich, München (2022)
Preprint (1)
16.
Preprint
H2MV (v1.0): Global physically-constrained deep learning water cycle model with vegetation. EGUsphere (2024)