Title of article :
Wavelet Regression Technique for Streamflow Prediction
Author/Authors :
Murat Küçük & Necati A?irali?o?lu، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
In order to explain many secret events of natural phenomena, analyzing non-stationary
series is generally an attractive issue for various research areas. The wavelet transform technique,
which has been widely used last two decades, gives better results than former techniques for the
analysis of earth science phenomena and for feature detection of real measurements. In this
study, a new technique is offered for streamflow modeling by using the discrete wavelet
transform. This new technique depends on the feature detection characteristic of the wavelet
transform. The model was applied to two geographical locations with different climates. The
results were compared with energy variation and error values of models. The new technique
offers a good advantage through a physical interpretation. This technique is applied to
streamflow regression models, because they are simple and widely used in practical applications.
However, one can apply this technique to other models
Keywords :
Discrete wavelet transform , Streamflow prediction , hydrological modeling
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS