A method to derive satellite PAR albedo time series over first-year sea ice in the Arctic Ocean
Author:
Laliberté Julien1, Rehm Eric1, Hamre Borge2, Goyens Clémence3, Perovich Donald K.4, Babin Marcel1
Affiliation:
1. 1Département de biologie et Québec-Océan, Takuvik Joint International Laboratory, Laval University (Canada)—CNRS (France), Québec, Québec, Canada 2. 2Department of Physics and Technology, University of Bergen, Bergen, Norway 3. 3Royal Belgian Institute of Natural Sciences, Brussels, Belgium 4. 4Thayer School of Engineering, Dartmouth College, Hanover, NH, USA
Abstract
Deriving sea ice albedo from spaceborne platforms is of interest to model the propagation of the photosynthetically available radiation (PAR) through Arctic sea ice. We show here that use of the Moderate Resolution Imaging Spectroradiometer (MODIS) operational surface reflectance satellite product to derive albedo in the PAR spectral range is possible. To retrieve PAR albedo from the remote sensing surface reflectance, we trained a predictive model based on a principal component analysis with in situ and simulated data. The predictive model can be applied to first-year sea ice surfaces such as dry snow, melting snow, bare ice and melt ponds. Based on in situ measurements and the prescribed atmospheric correction uncertainty, the estimated PAR albedo had a mean absolute error of 0.057, a root mean square error of 0.074 and an R2 value of 0.91. As a demonstration, we retrieved PAR albedo on a 9-km2 area over late spring and early summer 2015 and 2016 at a coastal location in Baffin Bay, Canada. On-site measurements of PAR albedo, melt pond fraction and types of precipitation were used to examine the estimated PAR albedo time series. The results show a dynamic and realistic PAR albedo time series, although clouds remained the major obstacle to the method. This easy-to-implement model may be used for the partitioning of PAR in the Arctic Ocean and ultimately to better understand the dynamics of marine primary producers.
Publisher
University of California Press
Subject
Atmospheric Science,Geology,Geotechnical Engineering and Engineering Geology,Ecology,Environmental Engineering,Oceanography
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