Snowpack relative permittivity and density derived from near‐coincident lidar and ground‐penetrating radar

Author:

Bonnell Randall1ORCID,McGrath Daniel1ORCID,Hedrick Andrew R.2ORCID,Trujillo Ernesto23,Meehan Tate G.4,Williams Keith5,Marshall Hans‐Peter3,Sexstone Graham6ORCID,Fulton John6,Ronayne Michael J.1,Fassnacht Steven R.78,Webb Ryan W.9ORCID,Hale Katherine E.10

Affiliation:

1. Department of Geosciences Colorado State University Fort Collins Colorado USA

2. Northwest Watershed Research Center USDA Agricultural Research Service Boise Idaho USA

3. Department of Geosciences Boise State University Boise Idaho USA

4. Cold Regions Research and Engineering Laboratory U.S. Army Corps of Engineers Hanover New Hampshire USA

5. GAGE Facility UNAVCO Inc. Boulder Colorado USA

6. U.S. Geological Survey Colorado Water Science Center Denver Colorado USA

7. ESS‐Watershed Science Colorado State University Fort Collins Colorado USA

8. Cooperative Institute for Research in the Atmosphere Colorado State University Fort Collins Colorado USA

9. Department of Civil and Architectural Engineering and Construction Management University of Wyoming Laramie Wyoming USA

10. Department of Civil and Environmental Engineering University of Vermont Burlington Vermont USA

Abstract

AbstractDepth‐based and radar‐based remote sensing methods (e.g., lidar, synthetic aperture radar) are promising approaches for remotely measuring snow water equivalent (SWE) at high spatial resolution. These approaches require snow density estimates, obtained from in‐situ measurements or density models, to calculate SWE. However, in‐situ measurements are operationally limited, and few density models have seen extensive evaluation. Here, we combine near‐coincident, lidar‐measured snow depths with ground‐penetrating radar (GPR) two‐way travel times (twt) of snowpack thickness to derive >20 km of relative permittivity estimates from nine dry and two wet snow surveys at Grand Mesa, Cameron Pass, and Ranch Creek, Colorado. We tested three equations for converting dry snow relative permittivity to snow density and found the Kovacs et al. (1995) equation to yield the best comparison with in‐situ measurements (RMSE = 54 kg m−3). Variogram analyses revealed a 19 m median correlation length for relative permittivity and snow density in dry snow, which increased to >30 m in wet conditions. We compared derived densities with estimated densities from several empirical models, the Snow Data Assimilation System (SNODAS), and the physically based iSnobal model. Estimated and derived densities were combined with snow depths and twt to evaluate density model performance within SWE remote sensing methods. The Jonas et al. (2009) empirical model yielded the most accurate SWE from lidar snow depths (RMSE = 51 mm), whereas SNODAS yielded the most accurate SWE from GPR twt (RMSE = 41 mm). Densities from both models generated SWE estimates within ±10% of derived SWE when SWE averaged >400 mm, however, model uncertainty increased to >20% when SWE averaged <300 mm. The development and refinement of density models, particularly in lower SWE conditions, is a high priority to fully realize the potential of SWE remote sensing methods.

Funder

Colorado Department of Transportation

National Aeronautics and Space Administration

National Science Foundation

Publisher

Wiley

Subject

Water Science and Technology

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