“…An increasing number of studies recommended that wet-bulb temperature (T w ) should be a better discriminator for the rain-snow partitioning (Behrangi et al, 2018;Ding et al, 2014;Harder & Pomeroy, 2014;Marks et al, 2013;Olsen, 2003;Sims & Liu, 2015;Yamazaki, 2001;Zhang et al, 2011) rather than other variables such as dew point temperature (Behrangi et al, 2018;Marks et al, 2013) or surface air pressure (Dai, 2008). T w is closer to the surface temperature of a falling hydrometeor than T a , representing the cooling effects due to surface evaporation at a constant pressure (Rogers & Yau, 1989) and thus may improve the prediction skill in distinguishing the precipitation phase (Behrangi et al, 2018;Ding et al, 2014). Behrangi et al (2018) suggest that using T w results in the highest prediction skill in the partitioning of precipitation across regions among precipitation partitioning methods that use a single atmospheric variable over global snow-covered regions.…”