This paper introduces three artificial neural network (ANN) architectures for monthly streamflow forecasting: a radial basis function network, an extreme learning machine, and the Elman network. Three ensemble techniques, a simple average ensemble, a weighted average ensemble, and an ANN-based ensemble, were used to combine the outputs of the individual ANN models. The objective was to highlight the performance of the general regression neural network-based ensemble technique (GNE) through an improvement of monthly streamflow forecasting accuracy. Before the construction of an ANN model, data preanalysis techniques, such as empirical wavelet transform (EWT), were exploited to eliminate the oscillations of the streamflow series. Additionally...
Skilful short-term streamflow forecasting is a challenging task, but useful for addressing a variety...
Forecasting future behaviour of process, by using the key process variables, enables effective decis...
Time series forecasting is the use of a model to forecast future events based on known past events....
This paper introduces three artificial neural network (ANN) architectures for monthly streamflow for...
Precise and correct estimation of streamflow is important for the operative progression in water res...
Sustainable water resources management is facing a rigorous challenge due to global climate change. ...
Accurate and reliable streamflow forecasting plays an important role in various aspects of water res...
Author name used in this publication: K.W. Chau2010-2011 > Academic research: refereed > Publication...
In this paper, three data-preprocessing techniques, moving average (MA), singular spectrum analysis ...
The potential of the most recent pre-processing tool, namely, complete ensemble empirical mode decom...
The previous ESP (Ensemble Streamflow Prediction) studies conducted in Korea reported that the model...
AbstractThis paper presents the application of autoregressive integrated moving average (ARIMA), sea...
For the inherent characteristics of a raw streamflow times series and the complicated relationship b...
Abstract:-Providing stream flow forecasting models is one of the most important problems in water re...
Abstract--Unlike other hydrological time series data, rainfall and runoff time series data are highl...
Skilful short-term streamflow forecasting is a challenging task, but useful for addressing a variety...
Forecasting future behaviour of process, by using the key process variables, enables effective decis...
Time series forecasting is the use of a model to forecast future events based on known past events....
This paper introduces three artificial neural network (ANN) architectures for monthly streamflow for...
Precise and correct estimation of streamflow is important for the operative progression in water res...
Sustainable water resources management is facing a rigorous challenge due to global climate change. ...
Accurate and reliable streamflow forecasting plays an important role in various aspects of water res...
Author name used in this publication: K.W. Chau2010-2011 > Academic research: refereed > Publication...
In this paper, three data-preprocessing techniques, moving average (MA), singular spectrum analysis ...
The potential of the most recent pre-processing tool, namely, complete ensemble empirical mode decom...
The previous ESP (Ensemble Streamflow Prediction) studies conducted in Korea reported that the model...
AbstractThis paper presents the application of autoregressive integrated moving average (ARIMA), sea...
For the inherent characteristics of a raw streamflow times series and the complicated relationship b...
Abstract:-Providing stream flow forecasting models is one of the most important problems in water re...
Abstract--Unlike other hydrological time series data, rainfall and runoff time series data are highl...
Skilful short-term streamflow forecasting is a challenging task, but useful for addressing a variety...
Forecasting future behaviour of process, by using the key process variables, enables effective decis...
Time series forecasting is the use of a model to forecast future events based on known past events....