Document Type
Article
Publication Date
11-14-2024
Department
Department of Geological and Mining Engineering and Sciences
Abstract
Seasonal snowpack is an important predictor of the water resources available in the following spring and early-summer melt season. Total basin snow water equivalent (SWE) estimation usually requires a form of statistical analysis that is implicitly built upon the Gaussian framework. However, it is important to characterize the non-Gaussian properties of snow distribution for accurate large-scale SWE estimation based on remotely sensed or sparse ground-based observations. This study quantified non-Gaussianity using sample negentropy; the Kullback-Leibler divergence from the Gaussian distribution for field-observed snow depth data from the North Slope, Alaska; and three representative SWE distributions in the western USA from the Airborne Snow Observatory (ASO). Snowdrifts around lakeshore cliffs and deep gullies can bring moderate non-Gaussianity in the open, lowland tundra of North Slope, Alaska, while the ASO dataset suggests that subalpine forests may effectively suppress the non-Gaussianity of snow distribution. Thus, non-Gaussianity is found in areas with partial snow cover and wind-induced snowdrifts around topographic breaks on slopes and on other steep terrain features. The snowpacks may be considered weakly Gaussian in coastal regions with open tundra in Alaska and alpine and subalpine terrains in the western USA if the land is completely covered by snow. The wind-induced snowdrift effect can potentially be partitioned from the observed snow spatial distribution guided by its Gaussianity.
Publication Title
Cryosphere
Recommended Citation
Ohara, N.,
Parsekian, A.,
Jones, B.,
Rangel, R.,
Hinkel, K.,
&
Perdigão, R.
(2024).
Characterization of non-Gaussianity in the snow distributions of various landscapes.
Cryosphere,
18(11), 5139-5152.
http://doi.org/10.5194/tc-18-5139-2024
Retrieved from: https://digitalcommons.mtu.edu/michigantech-p2/1215
Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 International License.
Version
Publisher's PDF
Publisher's Statement
© Author(s) 2024. Publisher’s version of record: https://doi.org/10.5194/tc-18-5139-2024