Weather-Dependent Nonlinear Microwave Behavior of Seasonal
High-Elevation Snowpacks
Abstract
Ensemble predictions of the seasonal snowpack over Grand Mesa, CO were
conducted for the hydrologic year 2016-2017 using a multilayer snow
hydrology model. Ensembles were generated from gridded atmospheric
reanalysis, model predictions were evaluated against SnowEx’17
measurements, and the signatures of the weather-dependent variability of
snow physics in the behavior of multi-frequency microwave brightness
temperatures and backscattering were examined through forward modeling.
At sub-daily timescales , the ensemble standard deviation due to
atmospheric forcing (i.e., mesoscale spatial variability of weather
within the Grand Mesa) is < 3 dB for dry snow, and increases
to 8-10 dB at midday when there is surficial melt that also explains the
wide ensemble range (~20 dB). Further, the ensemble mean
backscatter exhibits robust (R 2 > 0.95) time-varying,
weather-dependent linear heuristic relationships with SWE (e.g., 5-6
cm/dB/month in January; 2-2.5 cm/dB/month in late February) as
melt-refreeze cycles modify the microphysical structure in the top 50 cm
of the snowpack. The nonlinear evolution of ensemble snow physics
translates into seasonal hysteresis in the microwave behavior. The
backscatter hysteretic offsets between accumulation and melt regimes are
robust in the Land C-bands and collapse for wet shallow snow at Ku-band.
The ensemble mean emissions behave as a limit-cycles with weak
sensitivity in the accumulation regime, and hysteretic behavior during
melt that is different for deep (winter-spring transition) and shallow
snow (spring-summer) and offsets that increase with frequency. These
findings suggest potential for multi-frequency active-passive
remote-sensing of SWE conditional on snowpack regime, particularly
suited for data-assimilation using coupled snow hydrology-microwave
models.