Improved Parameterization of Snow Albedo in WRF + Noah
Methodology Based on a Severe Snow Event on the Tibetan Plateau
Lian Liu (Chinese Academy of Sciences)
Massimo Menenti (TU Delft - Optical and Laser Remote Sensing, Chinese Academy of Sciences)
Yaoming Ma (Lanzhou University, National Observation and Research Station for Qomolongma Special Atmospheric Processes and Environmental Changes, Chinese Academy of Sciences)
Weiqiang Ma (National Observation and Research Station for Qomolongma Special Atmospheric Processes and Environmental Changes, Chinese Academy of Sciences)
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Abstract
Snowfall and the subsequent evolution of the snowpack have a large effect on the surface energy balance and water cycle of the Tibetan Plateau (TP). The effects of snow cover can be represented by the WRF coupled with a land surface scheme. The widely used Noah scheme is computationally efficient, but its poor representation of albedo needs considerable improvement. In this study, an improved albedo scheme is developed using a satellite-retrieved albedo that takes snow depth and age into account. Numerical experiments were then conducted to simulate a severe snow event in March 2017. The performance of the coupled WRF/Noah model, which implemented the improved albedo scheme, is compared against the model’s performance using the default Noah albedo scheme and against the coupled WRF/CLM that applied CLM albedo scheme. When the improved albedo scheme is implemented, the albedo overestimation in the southeastern TP is reduced, reducing the RMSE of the air temperature by 0.7°C. The improved albedo scheme also attains the highest correlation between the satellite-derived and the model-estimated albedo, which provides for a realistic representation of both the snow water equivalent (SWE) spatial distribution in the heavy snowbelt (SWE > 6 mm) and the maximum SWE in the eastern TP. The underestimated albedo in the coupled WRF/CLM leads to underestimating the regional maximum SWE and a consequent failure to estimate SWE in the heavy snowbelt accurately. Our study demonstrates the feasibility of improving the Noah albedo scheme and provides a theoretical reference for researchers aiming to improve albedo schemes further.