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High resolution monthly precipitation isotope estimates across Australia from machine learning

dc.contributor.authorFalster, Gen_AU
dc.contributor.authorAbramowitz, Gen_AU
dc.contributor.authorHobeichi, Sen_AU
dc.contributor.authorHughes, CEen_AU
dc.contributor.authorTreble, PCen_AU
dc.contributor.authorAbram, NJen_AU
dc.contributor.authorBird, MIen_AU
dc.contributor.authorCauquoin, Aen_AU
dc.contributor.authorDixon, Ben_AU
dc.contributor.authorDrysdale, RDen_AU
dc.contributor.authorJin, CHen_AU
dc.contributor.authorMunksgaard, NCen_AU
dc.contributor.authorProemse, Ben_AU
dc.contributor.authorTyler, JJen_AU
dc.contributor.authorWerner, Men_AU
dc.contributor.authorTadros, CVen_AU
dc.date.accessioned2026-03-12T20:50:31Zen_AU
dc.date.issued2026-01-22en_AU
dc.date.statistics2026-02-24en_AU
dc.description.abstractAbstract. The stable isotopic composition of precipitation (δ2HP, δ18OP; “water isotopes”) is a powerful tool for tracking water through the atmosphere, as well as fingerprinting land-surface water masses and identifying water cycle biases in isotope-enabled climate models. Water isotopes also underpin our understanding of multi-decadal to multi-centennial water cycle variability via their retrieval from palaeoclimate archives. Water isotopes thereby increase our understanding of past and present – and hence future – water cycle variability. Understanding the drivers of spatial and temporal water isotope variability is a critical first step in applying these tracers for a better understanding of the water cycle. However, water isotope observations are sparse in both space and time. Here we develop and apply a machine learning (random forest) approach to predict spatially continuous monthly δ2HP and δ18OP across the Australian continent at 0.25° resolution from 1962–2023. We train the random forest models on monthly δ2HP (n=5199) and δ18OP (n=5217) observations from 60 sites across Australia. We also predict the deuterium excess of precipitation (dxsP, defined as δ2HP-8×δ18OP). Out-of-sample δ2HP and δ18OP prediction skill is high both geographically and temporally. Skill is slightly lower for the secondary parameter dxsP, likely reflecting the larger reliance of spatio-temporal dxsP variability on moisture source conditions. The random forest models accurately capture both the seasonal cycle of precipitation isotopic variability and long-term annual-mean precipitation isotopic variability across the continent, and outperform estimates from an isotope-enabled atmosphere general circulation model over an equivalent time period. We show that spatio-temporal variability in precipitation amount, precipitation intensity, and surface temperature are particularly important for monthly δ2HP and δ18OP variations across the continent, with local surface pressure also important for dxsP. Drivers of site-level δ2HP, δ18OP, and dxsP are more varied. Overall, the new random forest modelled dataset reveals clear spatial and temporal variability in δ2HP, δ18OP, and dxsP across the Australian continent over the past decades – providing a robust foundation for hydrology, ecology, and palaeoclimate research, as well as an accessible framework for predicting water isotope values in other locations. © Author(s) 2026. This work is distributed under the Creative Commons Attribution 4.0 Licenseen_AU
dc.identifier.citationFalster, G., Abramowitz, G., Hobeichi, S., Hughes, C., Treble, P., Abram, N. J., Bird, M. I., Cauquoin, A., Dixon, B., Drysdale, R., Jin, C., Munksgaard, N., Proemse, B., Tyler, J. J., Werner, M., & Tadros, C. V. (2026). High resolution monthly precipitation isotope estimates across Australia from machine learning. Hydrology and Earth System Sciiences, 30(2), 289–315. doi:10.5194/hess-30-289-2026en_AU
dc.identifier.issn1027-5606en_AU
dc.identifier.issn1607-7938en_AU
dc.identifier.issue2en_AU
dc.identifier.journaltitleHydrology and Earth System Sciencesen_AU
dc.identifier.pagination289-315en_AU
dc.identifier.urihttps://doi.org/10.5194/hess-30-289-2026en_AU
dc.identifier.urihttps://apo.ansto.gov.au/handle/10238/17148en_AU
dc.identifier.volume30en_AU
dc.languageEnglishen_AU
dc.language.isoenen_AU
dc.publisherCopernicus Publicationsen_AU
dc.subjectPrecipitationen_AU
dc.subjectAustraliaen_AU
dc.subjectMachine Learningen_AU
dc.subjectIsotopesen_AU
dc.subjectWateren_AU
dc.subjectDeuteriumen_AU
dc.subjectMoistureen_AU
dc.subjectForestsen_AU
dc.subjectTemperature rangeen_AU
dc.subjectHydrologyen_AU
dc.subjectEcologyen_AU
dc.subjectAmbient temperatureen_AU
dc.subjectTracer techniquesen_AU
dc.subjectClimatesen_AU
dc.subjectSeasonal variationsen_AU
dc.titleHigh resolution monthly precipitation isotope estimates across Australia from machine learningen_AU
dc.typeJournal Articleen_AU

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