The prediction of medium- and long-term runoff is of great significance to the comprehensive utilization of water resources. Building an adaptive data-driven runoff prediction model by automatic identification of multivariate time series change in runoff forecasting and identifying its influence degree is an attractive and intricate task. At present, the commonly used screening factor method is correlational analysis; others offer multi-collinearity. If these factors are directly input into the model, the parameters of the model tend to increase, and the excessive redundancy and noise adversely affects the prediction results of the model. On the basis of previous studies on medium- and long-term runoff prediction methods, this paper propose...
Abstract Flood prevention and disaster mitigation have a great impact on people's lives and properti...
Predicting watershed runoff is complicated because of spatial heterogeneity exhibited by various phy...
The previous ESP (Ensemble Streamflow Prediction) studies conducted in Korea reported that the model...
Because of the complex nonstationary and nonlinear characteristics of annual runoff time series, it ...
Based on the data of annual runoff at Boluo Hydrologic Station in the Dongjiang River of Guangdong P...
The concept of rainfall-runoff variation is a non-linear event and highly tedious and continuously c...
Hydrological time series forecasting is one of the most important applications in modern hydrology, ...
The complex and unique topography of karst regions highlights the weaknesses of traditional hydrolog...
This paper introduces three artificial neural network (ANN) architectures for monthly streamflow for...
This survey paper focused on data mining technique based on artificial neural network and its applic...
TOPMODEL is a semi-distributed rainfall runoff model that has been widely used in numerous water res...
WOS: 000441994400049Streamflow forecasting based on past records is an important issue in both hydro...
Rainfall-runoff relationships are among the most complex hydrologic phenomena. The conceptual models...
Abstract The accurate prediction of monthly runoff in the lower reaches of the Yellow River is cruci...
There are many models that have been used to simulate the rainfall-runoff relationship. The artifici...
Abstract Flood prevention and disaster mitigation have a great impact on people's lives and properti...
Predicting watershed runoff is complicated because of spatial heterogeneity exhibited by various phy...
The previous ESP (Ensemble Streamflow Prediction) studies conducted in Korea reported that the model...
Because of the complex nonstationary and nonlinear characteristics of annual runoff time series, it ...
Based on the data of annual runoff at Boluo Hydrologic Station in the Dongjiang River of Guangdong P...
The concept of rainfall-runoff variation is a non-linear event and highly tedious and continuously c...
Hydrological time series forecasting is one of the most important applications in modern hydrology, ...
The complex and unique topography of karst regions highlights the weaknesses of traditional hydrolog...
This paper introduces three artificial neural network (ANN) architectures for monthly streamflow for...
This survey paper focused on data mining technique based on artificial neural network and its applic...
TOPMODEL is a semi-distributed rainfall runoff model that has been widely used in numerous water res...
WOS: 000441994400049Streamflow forecasting based on past records is an important issue in both hydro...
Rainfall-runoff relationships are among the most complex hydrologic phenomena. The conceptual models...
Abstract The accurate prediction of monthly runoff in the lower reaches of the Yellow River is cruci...
There are many models that have been used to simulate the rainfall-runoff relationship. The artifici...
Abstract Flood prevention and disaster mitigation have a great impact on people's lives and properti...
Predicting watershed runoff is complicated because of spatial heterogeneity exhibited by various phy...
The previous ESP (Ensemble Streamflow Prediction) studies conducted in Korea reported that the model...