Abstract:
Precipitations are the key parameters of hydrological models; so, research
related to precipitation processes is necessary for solving various applied problems.
The
paper demonstrates a violation of the Markov property for precipitation observed in
essentially different climatic regions — in the cities of Potsdam and Elista. Such
information about the data, along with previously studied properties,
represents the basic
information which is necessary for the further correct construction of
probabilistic models,
in particular, for probability distribution of the volumes of extreme
precipitation. For the
analysis of the probabilistic behavior of the precipitation process and
the construction of
forecasts, it is suggested to use chains of events (patterns) extracted from the data.
At the same time, statistical procedures are automated using the software
tools of the
MATLAB package. Neural networks were used as an alternative forecasting tool
based on patterns, and the best results were demonstrated via the
architecture that takes
into account a seasonality, has two hidden layers of neurons and a sigmoid activation
function. The ideas for further research in this field are suggested.