Real time operation studies such as reservoir operation, flood forecasting, etc., necessitates good forecasts of the associated hydrologic variable(s). A significant improvement in such forecasting can be obtained by suitable pre-processing. In this study, a simple and efficient prediction technique based on Singular Spectrum Analysis (SSA) coupled with Support Vector Machine (SVM) is proposed. While SSA decomposes original time series into a set of high and low frequency components, SVM helps in efficiently dealing with the computational and generalization performance in a high-dimensional input space. The proposed technique is applied to predict the Tryggevælde catchment runoff data (Denmark) and the Singapore rainfall data as case studie...
In the recent past, a variety of statistical and other modelling approaches have been developed to c...
[[abstract]]Forecasting and monitoring of rainfall values are increasingly important for decreasing ...
In high-density urban areas, flooding affects a large number of people. A rapidly implementable nons...
This study presents support vector machine based model for forecasting the runoff-rainfall events. A...
A hybrid model integrating artificial neural networks and support vector regression was developed fo...
Effective modelling and prediction of smaller time step rainfall is reported to be very difficult ow...
In this study, a forecasting model for nonlinear and non-stationary hydrological data based on singu...
There are many models that have been used to simulate the rainfall-runoff relationship. The artifici...
Accurate time- and site-specific forecasts of streamflow and reservoir inflow are important in effec...
Identifying the local time scale of the torrential rainfall pattern through Singular Spectrum Analys...
Accurately modeling rainfall–runoff (R–R) transform remains a challenging task despite that a wide r...
xi, 246 p. : ill. (some col.) ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P CSE 2010 WuData-driv...
A popular method for time series analysis to extract the components of noise and trend from the time...
This paper describes an exploration in using SVM (Support Vector Machine) models, which were initial...
Developing reliable estimates of streamow prediction are crucial for water resources management and ...
In the recent past, a variety of statistical and other modelling approaches have been developed to c...
[[abstract]]Forecasting and monitoring of rainfall values are increasingly important for decreasing ...
In high-density urban areas, flooding affects a large number of people. A rapidly implementable nons...
This study presents support vector machine based model for forecasting the runoff-rainfall events. A...
A hybrid model integrating artificial neural networks and support vector regression was developed fo...
Effective modelling and prediction of smaller time step rainfall is reported to be very difficult ow...
In this study, a forecasting model for nonlinear and non-stationary hydrological data based on singu...
There are many models that have been used to simulate the rainfall-runoff relationship. The artifici...
Accurate time- and site-specific forecasts of streamflow and reservoir inflow are important in effec...
Identifying the local time scale of the torrential rainfall pattern through Singular Spectrum Analys...
Accurately modeling rainfall–runoff (R–R) transform remains a challenging task despite that a wide r...
xi, 246 p. : ill. (some col.) ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P CSE 2010 WuData-driv...
A popular method for time series analysis to extract the components of noise and trend from the time...
This paper describes an exploration in using SVM (Support Vector Machine) models, which were initial...
Developing reliable estimates of streamow prediction are crucial for water resources management and ...
In the recent past, a variety of statistical and other modelling approaches have been developed to c...
[[abstract]]Forecasting and monitoring of rainfall values are increasingly important for decreasing ...
In high-density urban areas, flooding affects a large number of people. A rapidly implementable nons...