Articles | Volume 4, issue 9
https://doi.org/10.5194/amt-4-1713-2011
https://doi.org/10.5194/amt-4-1713-2011
Research article
 | 
01 Sep 2011
Research article |  | 01 Sep 2011

Development of a high spectral resolution surface albedo product for the ARM Southern Great Plains central facility

S. A. McFarlane, K. L. Gaustad, E. J. Mlawer, C. N. Long, and J. Delamere

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