Hybrid Wavelet Transform-Neural Network Approach for Short Term and Long Term Time Series Flow Forecasting
Date
2014
Authors
Dadu, Khandekar Sachin
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Accurate modeling of runoff is useful in urban and environmental planning,
flood and water resources management. In this research, a hybrid model has been
developed for Brahmaputra River flow forecasting based on wavelet and artificial
neural network (ANN) methods. In this current study, discrete wavelet transform was
linked to ANN naming Wavelet Artificial Neural Network (WANN) for flow
forecasting. Ten year daily flow data from January 1990 to December 1999 of Pandu
and Pancharatna stations on Brahmaputra River, which carries heavy flood in
monsoon season in the North-East region of India, were used in the study. The
observed flow data were decomposed (up to 7 level) to multiresolution time series via
discrete wavelet transform using Daubechies wavelets of order ranging from 1 (db1)
to 5 (db5). Then multiresolution time series data were fed as input to ANN to get the
forecasted discharge values. Daily data were used to forecast flow values for lead
times 2, 3, 4, 7 and 14 day, weekly data were used to forecast flow values for lead
times 1 week and 2 week, and monthly data were used to forecast flow values for lead
time 1 month. The root mean square error (RMSE), determination coefficient (R2),
mean absolute error (MAE), BIAS (B), and scatter index (SI) were adopted to
evaluate the model‟s performance. It was found that for all lead times WANN model
has given better and consistent results compared to conventional ANN model. It was
mainly because of multiresolution time series used as inputs. Also it was found that,
model efficiency increases with increase in wavelet order, giving best results for db5
mother wavelet for all lead times for both the stations. Also, there has been significant
impact of decomposition level on WANN model efficiency as observed in the study.
Description
Keywords
Department of Applied Mechanics and Hydraulics, Wavelet transform, artificial neural network, streamflow, Daubechies wavelet, time series