Deriving Snow Depth From ICESat-2 Lidar Multiple Scattering Measurements: Uncertainty Analyses
Author
Lu, X.Hu, Y.
Zeng, X.
Stamnes, S.A.
Neuman, T.A.
Kurtz, N.T.
Yang, Y.
Zhai, P.-W.
Gao, M.
Sun, W.
Xu, K.
Liu, Z.
Omar, A.H.
Baize, R.R.
Rogers, L.J.
Mitchell, B.O.
Stamnes, K.
Huang, Y.
Chen, N.
Weimer, C.
Lee, J.
Fair, Z.
Affiliation
Department of Hydrology and Atmospheric Sciences, College of Science, The University of ArizonaIssue Date
2022-04-29
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Frontiers Media SACitation
Lu X, Hu Y, Zeng X, Stamnes SA, Neuman TA, Kurtz NT, Yang Y, Zhai P-W, Gao M, Sun W, Xu K, Liu Z, Omar AH, Baize RR, Rogers LJ, Mitchell BO, Stamnes K, Huang Y, Chen N, Weimer C, Lee J and Fair Z (2022) Deriving Snow Depth From ICESat-2 Lidar Multiple Scattering Measurements: Uncertainty Analyses. Front. Remote Sens. 3:891481. doi: 10.3389/frsen.2022.891481Journal
Frontiers in Remote SensingRights
© 2022 Lu, Hu, Zeng, Stamnes, Neuman, Kurtz, Yang, Zhai, Gao, Sun, Xu, Liu, Omar, Baize, Rogers, Mitchell, Stamnes, Huang, Chen, Weimer, Lee and Fair. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY).Collection Information
This item from the UA Faculty Publications collection is made available by the University of Arizona with support from the University of Arizona Libraries. If you have questions, please contact us at repository@u.library.arizona.edu.Abstract
The application of diffusion theory and Monte Carlo lidar radiative transfer simulations presented in Part I of this series of study suggests that snow depth can be derived from the first-, second- and third-order moments of the lidar backscattering pathlength distribution. These methods are now applied to the satellite ICESat-2 lidar measurements over the Arctic sea ice and land surfaces of Northern Hemisphere. Over the Arctic sea ice, the ICESat-2 retrieved snow depths agree well with co-located IceBridge snow radar measured values with a root-mean-square (RMS) difference of 7.8 cm or 29.2% of the mean snow depth. The terrestrial snow depths derived from ICESat-2 show drastic spatial variation of the snowpack along ICESat-2 ground tracks over the Northern Hemisphere, which are consistent with the University of Arizona (UA) and Canadian Meteorological Centre (CMC) gridded daily snow products. The RMS difference in snow depths between ICESat-2 and UA gridded daily snow products is 14 cm, or 28% of the mean UA snow depth. To better understand these results, we also discuss the possible sources of errors in ICESat-2 derived snow depths, including surface roughness within the laser footprint, atmospheric forward scattering, solar background noise, and detector dark current. Simulation results indicate that the snow depth errors would be less than 5 cm if the standard deviation of pulse spreading due to surface roughness is within 50 cm. Our results demonstrate that the ICESat-2 lidar measurements can be used to reliably derive snow depth, which is a critical geophysical parameter for cryosphere studies including sea ice thickness estimation and also provides important constraints in the modeling of terrestrial hydrological processes. Copyright © 2022 Lu, Hu, Zeng, Stamnes, Neuman, Kurtz, Yang, Zhai, Gao, Sun, Xu, Liu, Omar, Baize, Rogers, Mitchell, Stamnes, Huang, Chen, Weimer, Lee and Fair.Note
Open access journalISSN
2673-6187Version
Final Published Versionae974a485f413a2113503eed53cd6c53
10.3389/frsen.2022.891481
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Except where otherwise noted, this item's license is described as © 2022 Lu, Hu, Zeng, Stamnes, Neuman, Kurtz, Yang, Zhai, Gao, Sun, Xu, Liu, Omar, Baize, Rogers, Mitchell, Stamnes, Huang, Chen, Weimer, Lee and Fair. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY).