Retrieval of snow water equivalent from dual-frequency radar measurements: using time series to overcome the need for accurate a priori information
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Published:2024-01-04
Issue:1
Volume:18
Page:139-152
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ISSN:1994-0424
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Container-title:The Cryosphere
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language:en
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Short-container-title:The Cryosphere
Author:
Durand MichaelORCID, Johnson Joel T.ORCID, Dechow JackORCID, Tsang LeungORCID, Borah Firoz, Kim Edward J.
Abstract
Abstract. Measurements of radar backscatter are sensitive to snow water equivalent (SWE) across a wide range of frequencies, motivating proposals for satellite missions to measure global distributions of SWE. However, radar backscatter measurements are also sensitive to snow stratigraphy, to microstructure, and to ground surface roughness, complicating SWE retrieval. A number of recent advances have created new tools and datasets with which to address the retrieval problem, including a parameterized relationship between SWE, microstructure, and radar backscatter, and methods to characterize ground surface scattering. Although many algorithms also introduce external (prior) information on SWE or snow microstructure, the precision of the prior datasets used must be high in some cases in order to achieve accurate SWE retrieval. We hypothesize that a time series of radar measurements can be used to solve this problem and demonstrate that SWE retrieval with acceptable error characteristics is achievable by using previous retrievals as priors for subsequent retrievals. We demonstrate the accuracy of three configurations of prior information: using a global SWE model, using the previously retrieved SWE, and using a weighted average of the model and the previous retrieval. We assess the robustness of the approach by quantifying the sensitivity of the SWE retrieval accuracy to SWE biases artificially introduced in the prior. We find that the retrieval with the weighted averaged prior demonstrates SWE accuracy better than 20 % and an error increase of only 3 % relative RMSE per 10 % change in prior bias; the algorithm is thus both accurate and robust. This finding strengthens the case for future radar-based satellite missions to map SWE globally.
Publisher
Copernicus GmbH
Reference27 articles.
1. Cui, Y., Xiong, C., Lemmetyinen, J., Shi, J., Jiang, L., Peng, B., Li, H., Zhao, T., Ji, D., and Hu, T.: Estimating Snow Water Equivalent with Backscattering at X and Ku Band Based on Absorption Loss, Remote Sens.-Basel, 8, 505, https://doi.org/10.3390/rs8060505, 2016. a, b 2. Ding, K.-H., Xu, X., and Tsang, L.: Electromagnetic Scattering by Bicontinuous Random Microstructures with Discrete Permittivities, IEEE T. Geosci. Remote, 48, 3139–3151, https://doi.org/10.1109/tgrs.2010.2043953, 2010. a 3. Durand, M. and Margulis, S. A.: Feasibility Test of Multifrequency Radiometric Data Assimilation to Estimate Snow Water Equivalent, J. Hydrometeorol., 7, 443–457, https://doi.org/10.1175/jhm502.1, 2006. a 4. Durand, M., Gleason, C. J., Pavelsky, T. M., Frasson, R. P. d. M., Turmon, M., David, C. H., Altenau, E. H., Tebaldi, N., Larnier, K., Monnier, J., Malaterre, P. O., Oubanas, H., Allen, G. H., Astifan, B., Brinkerhoff, C., Bates, P. D., Bjerklie, D., Coss, S., Dudley, R., Fenoglio, L., Garambois, P., Getirana, A., Lin, P., Margulis, S. A., Matte, P., Minear, J. T., Muhebwa, A., Pan, M., Peters, D., Riggs, R., Sikder, M. S., Simmons, T., Stuurman, C., Taneja, J., Tarpanelli, A., Schulze, K., Tourian, M. J., and Wang, J.: A Framework for Estimating Global River Discharge From the Surface Water and Ocean Topography Satellite Mission, Water Resour. Res., 59, e2021WR031614, https://doi.org/10.1029/2021wr031614, 2023. a 5. Flanner, M. G. and Zender, C. S.: Linking snowpack microphysics and albedo evolution, J. Geophys. Res.-Atmos., 111, D12208, https://doi.org/10.1029/2005jd006834, 2006. a
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