Streamflow prediction is a vital public service that helps to establish flash-flood early warning systems or assess the impact of projected climate change on water management. However, the availability of streamflow observations limits the utilization of the state-of-the-art streamflow prediction techniques to the basins where hydrometric gauging stations exist. Since the most river basins in the world are ungauged, the development of the specialized techniques for the reliable streamflow prediction in ungauged basins (PUB) is of crucial importance. In recent years, the emerging field of deep learning provides a myriad of new models that can breathe new life into the stagnating PUB methods. In the presented study, we benchmark the streamflo...
Natural streamflow data is required in many hydrological applications. However, many basins are loca...
Although machine learning (ML) techniques are increasingly used in rainfall-runoff models, most of t...
As a genre of physics-informed machine learning, differentiable process-based hydrologic models (abb...
Rainfall-runoff modelling is essential for short- and long-term decision-making in the water managem...
Streamflow simulation and forecasting is an important approach for water resources management and fl...
Flood prediction in ungauged catchments is usually conducted by hydrological models that are paramet...
Rainfall-runoff modeling in ungauged basins continues to be a great hydrological research challenge....
Long-term forecasting of any hydrologic phenomena is essential for strategic environmental planning,...
International audienceIn the field of deep learning, LSTM lies in the category of recurrent neural n...
Enhancing the generalization capability of time-series models for streamflow prediction using dimens...
Streamow forecasting is essential for hydrological engineering. In accordance with theadvancement of...
Accurate river streamflow forecasts are a vital tool in the fields of water security, flood preparat...
Streamflow prediction in ungauged basins (PUB) is a process generating streamflow time series at ung...
The intercomparison of streamflow simulation and the prediction of discharge using various renowned ...
Accurate and reliable flow estimations are of great importance for hydroelectric power generation, f...
Natural streamflow data is required in many hydrological applications. However, many basins are loca...
Although machine learning (ML) techniques are increasingly used in rainfall-runoff models, most of t...
As a genre of physics-informed machine learning, differentiable process-based hydrologic models (abb...
Rainfall-runoff modelling is essential for short- and long-term decision-making in the water managem...
Streamflow simulation and forecasting is an important approach for water resources management and fl...
Flood prediction in ungauged catchments is usually conducted by hydrological models that are paramet...
Rainfall-runoff modeling in ungauged basins continues to be a great hydrological research challenge....
Long-term forecasting of any hydrologic phenomena is essential for strategic environmental planning,...
International audienceIn the field of deep learning, LSTM lies in the category of recurrent neural n...
Enhancing the generalization capability of time-series models for streamflow prediction using dimens...
Streamow forecasting is essential for hydrological engineering. In accordance with theadvancement of...
Accurate river streamflow forecasts are a vital tool in the fields of water security, flood preparat...
Streamflow prediction in ungauged basins (PUB) is a process generating streamflow time series at ung...
The intercomparison of streamflow simulation and the prediction of discharge using various renowned ...
Accurate and reliable flow estimations are of great importance for hydroelectric power generation, f...
Natural streamflow data is required in many hydrological applications. However, many basins are loca...
Although machine learning (ML) techniques are increasingly used in rainfall-runoff models, most of t...
As a genre of physics-informed machine learning, differentiable process-based hydrologic models (abb...