Although machine learning (ML) techniques are increasingly used in rainfall-runoff models, most of them are based on one-dimensional datasets. In this study, a rainfall-runoff model with deep learning algorithms (CNN-LSTM) was proposed to compute runoff in the watershed based on two-dimensional rainfall radar maps directly. The model explored a convolutional neural network (CNN) to process two-dimensional rainfall maps and long short-term memory (LSTM) to process one-dimensional output data from the CNN and the upstream runoff in order to calculate the flow of the downstream runoff. In addition, the Elbe River basin in Sachsen, Germany, was selected as the study area, and the high-water periods of 2006, 2011, and 2013, and the low-water per...
Streamow forecasting is essential for hydrological engineering. In accordance with theadvancement of...
This paper aims to evaluate two machine learning (ML) algorithms, namely, convolutional neural netwo...
Data for our benchmarking study of 2 LSTM based models compared against four traditional (lumped-con...
Considering the high random and non-static property of the rainfall-runoff process, lots of models a...
Rainfall-runoff modelling is essential for short- and long-term decision-making in the water managem...
Accurate flow forecasting may support responsible institutions in managing river systems and limitin...
Rainfall-runoff modeling in ungauged basins continues to be a great hydrological research challenge....
Rainfall-Runoff simulation is the backbone of all hydrological and climate change studies. This stud...
This study aims to explore the reliability of flood warning forecasts based on deep learning models,...
Abstract Streamflow (Q flow ) prediction is one of the essential steps for the reliable and robust w...
International audienceIn the field of deep learning, LSTM lies in the category of recurrent neural n...
Streamflow simulation and forecasting is an important approach for water resources management and fl...
An early warning flood forecasting system that uses machine-learning models can be utilized for savi...
Recent climate change has brought extremely heavy rains and widescale flooding to many areas around ...
Long short-term memory (LSTM) models are recurrent neural networks from the field of deep learning (...
Streamow forecasting is essential for hydrological engineering. In accordance with theadvancement of...
This paper aims to evaluate two machine learning (ML) algorithms, namely, convolutional neural netwo...
Data for our benchmarking study of 2 LSTM based models compared against four traditional (lumped-con...
Considering the high random and non-static property of the rainfall-runoff process, lots of models a...
Rainfall-runoff modelling is essential for short- and long-term decision-making in the water managem...
Accurate flow forecasting may support responsible institutions in managing river systems and limitin...
Rainfall-runoff modeling in ungauged basins continues to be a great hydrological research challenge....
Rainfall-Runoff simulation is the backbone of all hydrological and climate change studies. This stud...
This study aims to explore the reliability of flood warning forecasts based on deep learning models,...
Abstract Streamflow (Q flow ) prediction is one of the essential steps for the reliable and robust w...
International audienceIn the field of deep learning, LSTM lies in the category of recurrent neural n...
Streamflow simulation and forecasting is an important approach for water resources management and fl...
An early warning flood forecasting system that uses machine-learning models can be utilized for savi...
Recent climate change has brought extremely heavy rains and widescale flooding to many areas around ...
Long short-term memory (LSTM) models are recurrent neural networks from the field of deep learning (...
Streamow forecasting is essential for hydrological engineering. In accordance with theadvancement of...
This paper aims to evaluate two machine learning (ML) algorithms, namely, convolutional neural netwo...
Data for our benchmarking study of 2 LSTM based models compared against four traditional (lumped-con...