Leveraging Groundwater Dynamics to Improve Predictions of Summer Low‐Flow Discharges

Author:

Johnson Keira1,Harpold Adrian2ORCID,Carroll Rosemary W. H.3ORCID,Barnard Holly4ORCID,Raleigh Mark S.1ORCID,Segura Catalina5ORCID,Li Li6ORCID,Williams Kenneth H.78ORCID,Dong Wenming7ORCID,Sullivan Pamela L.1ORCID

Affiliation:

1. College of Earth, Ocean and Atmospheric Science Oregon State University Corvallis OR USA

2. Department of Natural Resources and Environmental Science University of Nevada Reno NV USA

3. Division of Hydrologic Sciences Desert Research Institute Reno NV USA

4. Department of Geography Institute of Arctic and Alpine Research University of Colorado Boulder Boulder CO USA

5. Forest Engineering Resources and Management College of Forestry Oregon State University Corvallis OR USA

6. Department of Civil and Environmental Engineering Pennsylvania State University State College PA USA

7. Lawrence Berkeley National Laboratory Berkeley CA USA

8. Rocky Mountain Biological Lab Gothic CO USA

Abstract

AbstractSummer streamflow predictions are critical for managing water resources; however, warming‐induced shifts from snow to rain regimes impact low‐flow predictive models. Additionally, reductions in snowpack drive earlier peak flows and lower summer flows across the western United States increasing reliance on groundwater for maintaining summer streamflow. However, it remains poorly understood how groundwater contributions vary interannually. We quantify recession limb groundwater (RLGW), defined as the proportional groundwater contribution to the stream during the period between peak stream flow and low flow, to predict summer low flows across three diverse western US watersheds. We ask (a) how do snow and rain dynamics influence interannual variations of RLGW contributions and summer low flows?; (b) which watershed attributes impact the effectiveness of RLGW as a predictor of summer low flows? Linear models reveal that RLGW is a strong predictor of low flows across all sites and drastically improves low‐flow prediction compared to snow metrics at a rain‐dominated site. Results suggest that strength of RLGW control on summer low flows may be mediated by subsurface storage. Subsurface storage can be divided into dynamic (i.e., variability saturated) and deep (i.e., permanently saturated) components, and we hypothesize that interannual variability in dynamic storage contribution to streamflow drives RLGW variability. In systems with a higher proportion of dynamic storage, RLGW is a better predictor of summer low flow because the stream is more responsive to dynamic storage contributions compared to deep‐storage‐dominated systems. Overall, including RLGW improved low‐flow prediction across diverse watersheds.

Funder

National Science Foundation

U.S. Department of Energy

Publisher

American Geophysical Union (AGU)

Subject

Water Science and Technology

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