GC24B-03
Snow: A New Model Diagnostic and Seasonal Forecast Influences

Tuesday, 15 December 2015: 16:30
3005 (Moscone West)
Andrew G Slater1,2, David M Lawrence1 and Charles Koven3, (1)National Center for Atmospheric Research, Boulder, CO, United States, (2)National Snow and Ice Data Center, Boulder, CO, United States, (3)Lawrence Berkeley National Laboratory, Berkeley, CA, United States
Abstract:
Snow is the most variable of terrestrial surface condition on the planet with the seasonal extent of snow cover varying by about 48% of land area in the Northern Hemisphere. Physical properties of snow such as high albedo, high insulation along with its ability to store moisture make it an integral component of mid- and high-latitude climates and it is therefore important that models capture these properties and associated processes. In this work we explore two items associated with snow and their role in the climate system. Firstly, a diagnostic measure of snow insulation that is rooted in the physics of heat transfer is introduced. Insulation of the ground during cold Arctic winters heavily influences the rate and depth of ground freezing (or thawing), which can then influence hydrologic and biogeochemical fluxes. The ability of models to simulate snow insulation varies widely. Secondly, the role of snow upon seasonal forecasts is demonstrated within a currently operational modeling system. Due to model system biases, mass and longevity of snow can vary with forecasts. In turn, a longer lasting and greater moisture store can have impacts upon the surface temperature. These impacts can linger for over two months after all snow has melted. The cause of the biases is identified and a solution posed.