For the inherent characteristics of a raw streamflow times series and the complicated relationship between multi-scale predictors and streamflow, monthly streamflow forecasting is very difficult. In this paper, an method was proposed integrating the ensemble empirical mode decomposition (EEMD), least absolute shrinkage and selection operator (Lasso) with deep belief networks (DBN) for forecasting monthly streamflow time series, which is EEMD-Lasso-DBN (ELD) method. To develop the ELD model, the raw streamflow time series was resolved into different elements, including intrinsic mode functions (IMFs) and residue series, using the EEMD technique. The predictors of each IMF element and residue were screened using the Lasso technique from a lar...
Author name used in this publication: K. W. Chau2009-2010 > Academic research: refereed > Publicatio...
The forecasting of monthly seasonal streamflow time series is an important issue for countries where...
Author name used in this publication: K.W. Chau2010-2011 > Academic research: refereed > Publication...
For the inherent characteristics of a raw streamflow times series and the complicated relationship b...
This paper introduces three artificial neural network (ANN) architectures for monthly streamflow for...
The accuracy and consistency of streamflow prediction play a significant role in several application...
In this study, a nonparametric technique to set up a river stage forecasting model based on empirica...
Hydrological time series forecasting is one of the most important applications in modern hydrology, ...
Accurate prediction of daily streamflow plays an essential role in various applications of water res...
Drought is a stochastic natural feature that arises due to intense and persistent shortage of precip...
Accurate prediction of daily streamflow plays an essential role in various applications of water res...
Data-driven methods are very useful for streamflow forecasting when the underlying physical relation...
Long-term streamflow forecast is of great significance for water resource application and management...
Accurate forecasting of streamflow data over daily timescales is a critical problem for the long-ter...
Because of the complex nonstationary and nonlinear characteristics of annual runoff time series, it ...
Author name used in this publication: K. W. Chau2009-2010 > Academic research: refereed > Publicatio...
The forecasting of monthly seasonal streamflow time series is an important issue for countries where...
Author name used in this publication: K.W. Chau2010-2011 > Academic research: refereed > Publication...
For the inherent characteristics of a raw streamflow times series and the complicated relationship b...
This paper introduces three artificial neural network (ANN) architectures for monthly streamflow for...
The accuracy and consistency of streamflow prediction play a significant role in several application...
In this study, a nonparametric technique to set up a river stage forecasting model based on empirica...
Hydrological time series forecasting is one of the most important applications in modern hydrology, ...
Accurate prediction of daily streamflow plays an essential role in various applications of water res...
Drought is a stochastic natural feature that arises due to intense and persistent shortage of precip...
Accurate prediction of daily streamflow plays an essential role in various applications of water res...
Data-driven methods are very useful for streamflow forecasting when the underlying physical relation...
Long-term streamflow forecast is of great significance for water resource application and management...
Accurate forecasting of streamflow data over daily timescales is a critical problem for the long-ter...
Because of the complex nonstationary and nonlinear characteristics of annual runoff time series, it ...
Author name used in this publication: K. W. Chau2009-2010 > Academic research: refereed > Publicatio...
The forecasting of monthly seasonal streamflow time series is an important issue for countries where...
Author name used in this publication: K.W. Chau2010-2011 > Academic research: refereed > Publication...