Snowfall occurs every winter over the mountains of South Africa but is rare over the highly populated
metropolises over the interior of South Africa. When snowfall does occur over highly populated areas, it
causes widespread disruption to infrastructure and even loss of life. Because of the rarity of snow over
the interior of South Africa, inexperienced weather forecasters often miss these events. We propose
a five-step snow forecasting decision tree in which all five criteria must be met to forecast snowfall.
The decision tree comprises physical attributes that are necessary for snowfall to occur. The first step
recognises the synoptic circulation patterns associated with snow and the second step detects whether
precipitation is likely in an area. The remaining steps all deal with identifying the presence of a snowflake
in a cloud and determining that the snowflake will not melt on the way to the ground. The decision tree
is especially useful to forecast the very rare snow events that develop from relatively dry and warmer
surface conditions. We propose operational implementation of the decision tree in the weather forecasting
offices of South Africa, as it is foreseen that this approach could significantly contribute to accurately
forecasting snow over the interior of South Africa.
• A method for forecasting disruptive snowfall is provided. It is envisaged that this method will contribute to
the improved forecasting of these severe weather events over South Africa.
• Weather systems responsible for snowfall are documented and the cloud microphysical aspects important
for the growth and melting of a snowflake are discussed.
• Forecasting methods are proposed for the very rare events when snow occurs over the interior of
South Africa when the air is relatively dry and somewhat warmer.
This paper emanates from the work that J.H.S. conducted to obtain his
MSc at the University of Pretoria under the supervision of L.D.