Abstract
The potential of machine learning for modeling spatio-temporal properties of water isotopologue
distributions in precipitation - NASA/ADS Now on home page ads icon ads Enable full ADS
view NASA/ADS The potential of machine learning for modeling spatio-temporal properties of
water isotopologue distributions in precipitation Rehfeld, Kira ; Wider, Jonathan ; Theisen,
Nadine ; Werner, Martin ; Köthe, Ullrich ; Weitzel, Nils Abstract Tracing the spatio-temporal
distribution of water isotopologues (eg, H216O, H218O,HD16O, D216O), in the atmosphere
allows insights in to the hydrological cycle and surface-atmosphere interactions. Strong
relationships between atmospheric circulation and isotopologue variability exist, mitigated by
fractionation during phase transitions of water. Isotopic gradients correlate with precipitation
amount, temperature, with distance to source areas of evaporation and often follow topographic …
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