Achieving Realistic Runoff in the Western United States with a Land Surface Model Forced by Dynamically Downscaled Meteorology

Author:

Bass Benjamin1ORCID,Rahimi Stefan1,Goldenson Naomi1,Hall Alex1,Norris Jesse1,Lebow Zachary J.2

Affiliation:

1. a Department of Atmospheric and Oceanic Sciences, University of California, Los Angeles, Los Angeles, California

2. b Department of Atmospheric Science, University of Wyoming, Laramie, Wyoming

Abstract

Abstract In this study, we calibrate a regional climate model’s (RCM) underlying land surface model (LSM). In addition to providing a realistic representation of runoff across the hydroclimatically diverse western United States, this is done to take advantage of the RCM’s ability to physically resolve meteorological forcing data in ungauged regions, and to prepare the calibrated hydrologic model for tight coupling, or the ability to represent land surface–atmosphere interactions, with the RCM. Specifically, we use a 9-km resolution meteorological forcing dataset across the western United States, from the fifth generation ECMWF Reanalysis (ERA5) downscaled by the Weather Research Forecasting (WRF) regional climate model, as an offline forcing for Noah-Multiparameterization (Noah-MP). We detail the steps involved in producing an LSM capable of accurately representing runoff, including physical parameterization selection, parameter calibration, and regionalization to ungauged basins. Based on our model evaluation from 1954 to 2021 for 586 basins with daily natural streamflow, the streamflow bias is reduced from 24.2% to 4.4%, and the median daily Nash–Sutcliffe efficiency (NSE) is improved from 0.12 to 0.36. When validating against basins with monthly natural streamflow data, we obtain a similar reduction in bias and a median monthly NSE improvement from 0.18 to 0.56. In this study, we also discover the optimal setup when using a donor-basin method to regionalize parameters to ungauged basins, which can vary by 0.06 NSE for unique designs of this regionalization method. Significance Statement This study provides useful guidance for improving a land surface model to accurately represent runoff across a spatially extensive and hydroclimatically diverse region (the western United States). The land surface model is updated to represent runoff more accurately at gauged basins, and then additionally updated for basins without observational data using a mathematical approach called the donor-basin method. We make use of a regional climate model’s reanalysis-derived meteorological data and its underlying land surface model to achieve realistic runoff. The calibrated land surface model can thus be tightly coupled in subsequent studies in a manner that should more accurately reflect runoff conditions. Findings from this study will serve as a useful reference for the atmospheric (and hydrologic) modeling communities and their ability to represent large-scale hydrology accurately.

Funder

California Energy Commission

Publisher

American Meteorological Society

Subject

Atmospheric Science

Reference42 articles.

1. AmeriFlux, 2022: AmerFlux network data. AmeriFlux, accessed 1 July 2022, https://ameriflux.lbl.gov/data/data-availability/#/FLUXNET.

2. Continuous streamflow prediction in ungauged basins: The effects of equifinality and parameter set selection on uncertainty in regionalization approaches;Arsenault, R.,2014

3. Global maps of streamflow characteristics based on observations from several thousand catchments;Beck, H. E.,2015

4. Bureau of Reclamation, 2021: Colorado River basin natural flow and salt data. Bureau of Reclamation, accessed 1 October 2021, https://www.usbr.gov/lc/region/g4000/NaturalFlow/current.html.

5. Estimation of hydrological parameters at ungauged catchments;Burn, D. H.,1993

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