TY - JOUR
T1 - Advancing the Representation of Human Actions in Large-Scale Hydrological Models
T2 - Challenges and Future Research Directions
AU - Galelli, Stefano
AU - Turner, Sean W.D.
AU - Pokhrel, Yadu
AU - Yi Ng., Jia
AU - Castelletti, Andrea
AU - Bierkens, Marc F.P.
AU - Pianosi, Francesca
AU - Biemans, Hester
N1 - Publisher Copyright:
© 2025 The Author(s).
PY - 2025/7
Y1 - 2025/7
N2 - Characterizing the impact of human actions on terrestrial water fluxes and storages at multi-basin, continental, and global scales has long been on the agenda of scientists engaged in climate science, hydrology, and water resources systems analysis. This need has resulted in a variety of modeling efforts focused on the representation of water infrastructure operations. Yet, the representation of human-water interactions in large-scale hydrological models is still relatively crude, fragmented across models, and often achieved at coarse resolutions ((Formula presented.) 10–100 km) that cannot capture local water management decisions. In this commentary, we argue that the concomitance of four drivers and innovations is poised to change the status quo: “hyper-resolution” hydrological models ((Formula presented.) 0.1–1 km), multi-sector modeling, satellite missions able to monitor the outcome of human actions, and machine learning are creating a fertile environment for human-water research to flourish. We then outline four challenges that chart future research in hydrological modeling: (a) creating hyper-resolution global data sets of water management practices, (b) improving the characterization of anthropogenic interventions on water quantity, stream temperature, and sediment transport, (c) improving model calibration and diagnostic evaluation, and (d) reducing the computational requirements associated with the successful exploration of these challenges. Overcoming them will require addressing modeling, computational, and data development needs that cut across the hydrology community, thereby requiring a major communal effort.
AB - Characterizing the impact of human actions on terrestrial water fluxes and storages at multi-basin, continental, and global scales has long been on the agenda of scientists engaged in climate science, hydrology, and water resources systems analysis. This need has resulted in a variety of modeling efforts focused on the representation of water infrastructure operations. Yet, the representation of human-water interactions in large-scale hydrological models is still relatively crude, fragmented across models, and often achieved at coarse resolutions ((Formula presented.) 10–100 km) that cannot capture local water management decisions. In this commentary, we argue that the concomitance of four drivers and innovations is poised to change the status quo: “hyper-resolution” hydrological models ((Formula presented.) 0.1–1 km), multi-sector modeling, satellite missions able to monitor the outcome of human actions, and machine learning are creating a fertile environment for human-water research to flourish. We then outline four challenges that chart future research in hydrological modeling: (a) creating hyper-resolution global data sets of water management practices, (b) improving the characterization of anthropogenic interventions on water quantity, stream temperature, and sediment transport, (c) improving model calibration and diagnostic evaluation, and (d) reducing the computational requirements associated with the successful exploration of these challenges. Overcoming them will require addressing modeling, computational, and data development needs that cut across the hydrology community, thereby requiring a major communal effort.
KW - catchment hydrology
KW - global hydrology
KW - human-water interactions
KW - hydraulic infrastructures
KW - large-scale models
KW - socio-hydrology
UR - https://www.scopus.com/pages/publications/105009545880
U2 - 10.1029/2024WR039486
DO - 10.1029/2024WR039486
M3 - Comment/Letter to the editor
AN - SCOPUS:105009545880
SN - 0043-1397
VL - 61
JO - Water Resources Research
JF - Water Resources Research
IS - 7
M1 - e2024WR039486
ER -