Title of article :
Modeling time series of climatic parameters
with probabilistic finite automata
Author/Authors :
L. Mora-Lo´ peza، نويسنده , , *، نويسنده , , J. Morab، نويسنده , , R. Morales-Buenoa، نويسنده , , M. Sidrach-de-Cardonac، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2005
Abstract :
A model to characterize and predict continuous time series from machine-learning techniques is proposed. This model includes
the following three steps: dynamic discretization of continuous values, construction of probabilistic finite automata and prediction
of new series with randomness. The first problem in most models from machine learning is that they are developed for discrete
values; however, most phenomena in nature are continuous. To convert these continuous values into discrete values a dynamic
discretization method has been used. With the obtained discrete series, we have built probabilistic finite automata which include all
the representative information which the series contain. The learning algorithm to build these automata is polynomial in the sample
size. An algorithm to predict new series has been proposed. This algorithm incorporates the randomness in nature. After finishing
the three steps of the model, the similarity between the predicted series and the real ones has been checked. For this, a new adaptable
test based on the classical KolmogoroveSmirnov two-sample test has been done. The cumulative distribution function of observed
and generated series has been compared using the concept of indistinguishable values. Finally, the proposed model has been applied
in several practical cases of time series of climatic parameters.
Keywords :
Modeling climatic data , time series , Machine Learning
Journal title :
Environmental Modelling and Software
Journal title :
Environmental Modelling and Software