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Title: CMIP6-based Multi-model Hydropower Projection over the Conterminous US, Version 1.1

Abstract

This dataset presents a suite of hydropower projections for the conterminous United States (CONUS), derived from multiple downscaled and bias-corrected Global Climate Models (GCMs) from the Coupled Model Intercomparison Project Phase 6 (CMIP6). The CMIP6 GCMs are downscaled using either statistical (DBCCA) or dynamical (RegCM) approaches, based on two meteorological reference datasets (Daymet and Livneh). The resulting downscaled precipitation, temperature, and wind speed data are then used to drive two calibrated hydrologic models (VIC and PRMS), enabling simulations of projected future hydrologic responses across the CONUS. Simulated total runoff is subsequently employed to drive two hydropower models (WMP, now implemented as mosartwmpy-power, and WRES) to evaluate how climate change may affect future hydropower production for both federal and non-federal hydropower fleets. This dataset was developed to support the SECURE Water Act Section 9505 Assessment for the U.S. Department of Energy (DOE) Water Power Technologies Office (WPTO). For further details, see Broman et al. (2024), Thurber et al. (2024), Kao et al. (2022), and Zhou et al. (2023).

Authors:
; ORCiD logo ; ; ; ; ORCiD logo ; ORCiD logo
  1. Pacific Northwest National Laboratory (PNNL)
  2. ORNL
Publication Date:
DOE Contract Number:  
AC05-00OR22725
Research Org.:
Oak Ridge National Laboratory (ORNL), Oak Ridge, TN (United States)
Sponsoring Org.:
USDOE Office of Energy Efficiency and Renewable Energy (EERE); USDOE
OSTI Identifier:
3001971
DOI:
https://doi.org/10.21951/swa9505v3/3001439

Citation Formats

Voisin, Nathalie, Kao, Shih-Chieh, Broman, Daniel, Zhou, Tian, Xu, Wenwei, Ghimire, Ganesh, and Gangrade, Sudershan. CMIP6-based Multi-model Hydropower Projection over the Conterminous US, Version 1.1. United States: N. p., 2025. Web. doi:10.21951/swa9505v3/3001439.
Voisin, Nathalie, Kao, Shih-Chieh, Broman, Daniel, Zhou, Tian, Xu, Wenwei, Ghimire, Ganesh, & Gangrade, Sudershan. CMIP6-based Multi-model Hydropower Projection over the Conterminous US, Version 1.1. United States. doi:https://doi.org/10.21951/swa9505v3/3001439
Voisin, Nathalie, Kao, Shih-Chieh, Broman, Daniel, Zhou, Tian, Xu, Wenwei, Ghimire, Ganesh, and Gangrade, Sudershan. 2025. "CMIP6-based Multi-model Hydropower Projection over the Conterminous US, Version 1.1". United States. doi:https://doi.org/10.21951/swa9505v3/3001439. https://www.osti.gov/servlets/purl/3001971. Pub date:Sat Nov 01 00:00:00 EDT 2025
@article{osti_3001971,
title = {CMIP6-based Multi-model Hydropower Projection over the Conterminous US, Version 1.1},
author = {Voisin, Nathalie and Kao, Shih-Chieh and Broman, Daniel and Zhou, Tian and Xu, Wenwei and Ghimire, Ganesh and Gangrade, Sudershan},
abstractNote = {This dataset presents a suite of hydropower projections for the conterminous United States (CONUS), derived from multiple downscaled and bias-corrected Global Climate Models (GCMs) from the Coupled Model Intercomparison Project Phase 6 (CMIP6). The CMIP6 GCMs are downscaled using either statistical (DBCCA) or dynamical (RegCM) approaches, based on two meteorological reference datasets (Daymet and Livneh). The resulting downscaled precipitation, temperature, and wind speed data are then used to drive two calibrated hydrologic models (VIC and PRMS), enabling simulations of projected future hydrologic responses across the CONUS. Simulated total runoff is subsequently employed to drive two hydropower models (WMP, now implemented as mosartwmpy-power, and WRES) to evaluate how climate change may affect future hydropower production for both federal and non-federal hydropower fleets. This dataset was developed to support the SECURE Water Act Section 9505 Assessment for the U.S. Department of Energy (DOE) Water Power Technologies Office (WPTO). For further details, see Broman et al. (2024), Thurber et al. (2024), Kao et al. (2022), and Zhou et al. (2023).},
doi = {10.21951/swa9505v3/3001439},
journal = {},
number = ,
volume = ,
place = {United States},
year = {Sat Nov 01 00:00:00 EDT 2025},
month = {Sat Nov 01 00:00:00 EDT 2025}
}