TY - JOUR
T1 - Global prediction of extreme floods in ungauged watersheds
AU - Nearing, Grey
AU - Cohen, Deborah
AU - Dube, Vusumuzi
AU - Gauch, Martin
AU - Gilon, Oren
AU - Harrigan, Shaun
AU - Hassidim, Avinatan
AU - Klotz, Daniel
AU - Kratzert, Frederik
AU - Metzger, Asher
AU - Nevo, Sella
AU - Pappenberger, Florian
AU - Prudhomme, Christel
AU - Shalev, Guy
AU - Shenzis, Shlomo
AU - Tekalign, Tadele Yednkachw
AU - Weitzner, Dana
AU - Matias, Yossi
N1 - Publisher Copyright:
© The Author(s) 2024.
PY - 2024/3/21
Y1 - 2024/3/21
N2 - Floods are one of the most common natural disasters, with a disproportionate impact in developing countries that often lack dense streamflow gauge networks1. Accurate and timely warnings are critical for mitigating flood risks2, but hydrological simulation models typically must be calibrated to long data records in each watershed. Here we show that artificial intelligence-based forecasting achieves reliability in predicting extreme riverine events in ungauged watersheds at up to a five-day lead time that is similar to or better than the reliability of nowcasts (zero-day lead time) from a current state-of-the-art global modelling system (the Copernicus Emergency Management Service Global Flood Awareness System). In addition, we achieve accuracies over five-year return period events that are similar to or better than current accuracies over one-year return period events. This means that artificial intelligence can provide flood warnings earlier and over larger and more impactful events in ungauged basins. The model developed here was incorporated into an operational early warning system that produces publicly available (free and open) forecasts in real time in over 80 countries. This work highlights a need for increasing the availability of hydrological data to continue to improve global access to reliable flood warnings.
AB - Floods are one of the most common natural disasters, with a disproportionate impact in developing countries that often lack dense streamflow gauge networks1. Accurate and timely warnings are critical for mitigating flood risks2, but hydrological simulation models typically must be calibrated to long data records in each watershed. Here we show that artificial intelligence-based forecasting achieves reliability in predicting extreme riverine events in ungauged watersheds at up to a five-day lead time that is similar to or better than the reliability of nowcasts (zero-day lead time) from a current state-of-the-art global modelling system (the Copernicus Emergency Management Service Global Flood Awareness System). In addition, we achieve accuracies over five-year return period events that are similar to or better than current accuracies over one-year return period events. This means that artificial intelligence can provide flood warnings earlier and over larger and more impactful events in ungauged basins. The model developed here was incorporated into an operational early warning system that produces publicly available (free and open) forecasts in real time in over 80 countries. This work highlights a need for increasing the availability of hydrological data to continue to improve global access to reliable flood warnings.
UR - http://www.scopus.com/inward/record.url?scp=85188257066&partnerID=8YFLogxK
U2 - 10.1038/s41586-024-07145-1
DO - 10.1038/s41586-024-07145-1
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C2 - 38509278
AN - SCOPUS:85188257066
SN - 0028-0836
VL - 627
SP - 559
EP - 563
JO - Nature
JF - Nature
IS - 8004
ER -