Precipitation in mountain regions is highly variable and poorly measured, posing important challenges to water resource management. Traditional methods to estimate precipitation include in-situ gauges, Doppler weather radars, satellite radars and radiometers, numerical modeling and reanalysis products. Each of these methods is unable to adequately capture complex orographic precipitation. Here, we propose a novel approach to characterize orographic snowfall over mountain regions. We use a particle batch smoother to leverage satellite information from Sentinel-1 derived snow depth retrievals and to correct various gridded precipitation products. This novel approach is tested using a simple snow model for an alpine basin located in Trentino Alto Adige, Italy. We quantify the precipitation biases across the basin and found that the assimilation method (i) corrects for snowfall biases and uncertainties, (ii) leads to cumulative snowfall elevation patterns that are consistent across precipitation products, and (iii) results in overall improved basin-wide snow variables (snow depth and snow cover area) and basin streamflow estimates.

Identifying snowfall elevation patterns by assimilating satellite-based snow depth retrievals / Girotto, Manuela; Formetta, Giuseppe; Azimi, Shima; Bachand, Claire; Cowherd, Marianne; De Lannoy, Gabrielle; Lievens, Hans; Modanesi, Sara; Raleigh, Mark S.; Rigon, Riccardo; Massari, Christian. - In: SCIENCE OF THE TOTAL ENVIRONMENT. - ISSN 0048-9697. - 2023, 906:(2024), pp. 16731201-16731214. [10.1016/j.scitotenv.2023.167312]

Identifying snowfall elevation patterns by assimilating satellite-based snow depth retrievals

Formetta, Giuseppe;Azimi, Shima;Rigon, Riccardo;
2024-01-01

Abstract

Precipitation in mountain regions is highly variable and poorly measured, posing important challenges to water resource management. Traditional methods to estimate precipitation include in-situ gauges, Doppler weather radars, satellite radars and radiometers, numerical modeling and reanalysis products. Each of these methods is unable to adequately capture complex orographic precipitation. Here, we propose a novel approach to characterize orographic snowfall over mountain regions. We use a particle batch smoother to leverage satellite information from Sentinel-1 derived snow depth retrievals and to correct various gridded precipitation products. This novel approach is tested using a simple snow model for an alpine basin located in Trentino Alto Adige, Italy. We quantify the precipitation biases across the basin and found that the assimilation method (i) corrects for snowfall biases and uncertainties, (ii) leads to cumulative snowfall elevation patterns that are consistent across precipitation products, and (iii) results in overall improved basin-wide snow variables (snow depth and snow cover area) and basin streamflow estimates.
2024
Girotto, Manuela; Formetta, Giuseppe; Azimi, Shima; Bachand, Claire; Cowherd, Marianne; De Lannoy, Gabrielle; Lievens, Hans; Modanesi, Sara; Raleigh, ...espandi
Identifying snowfall elevation patterns by assimilating satellite-based snow depth retrievals / Girotto, Manuela; Formetta, Giuseppe; Azimi, Shima; Bachand, Claire; Cowherd, Marianne; De Lannoy, Gabrielle; Lievens, Hans; Modanesi, Sara; Raleigh, Mark S.; Rigon, Riccardo; Massari, Christian. - In: SCIENCE OF THE TOTAL ENVIRONMENT. - ISSN 0048-9697. - 2023, 906:(2024), pp. 16731201-16731214. [10.1016/j.scitotenv.2023.167312]
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