Water flow forecasts are an essential information for energy production, management and hydropower control. Advanced actions to optimize electricity production can be taken based on predicted information. This work proposes an ensemble strategy using recurrent neural networks to generate a forecast of water flow at Jirau Hydroelectric Power Plant (HPP), installed on the Madeira River in Brazil. The ensemble strategy consists of combining three long short-term memory (LSTM) networks that model the Madeira River and two of its tributaries: Mamoré and Abunã rivers. The historical data from streamflow of the Madeira river and its tributaries are used to validate the ensemble LSTM model, where each time series of river tributaries are modeled se...
This study reports on the performance of two medium-range streamflow forecast models: (1) a multilay...
An early warning flood forecasting system that uses machine-learning models can be utilized for savi...
Various types of neural networks have been proposed in previous papers for applications in hydrologi...
Accurate river streamflow forecasts are a vital tool in the fields of water security, flood preparat...
The present study compares the performance of different architectures of recurrent neural networks i...
Accurate and reliable flow estimations are of great importance for hydroelectric power generation, f...
Streamow forecasting is essential for hydrological engineering. In accordance with theadvancement of...
Forecasting a hydrologic time series has been one of the most complicated tasks owing to the wide ra...
Forecasting a hydrologic time series has been one of the most complicated tasks owing to the wide ra...
Streamflow forecasting at short horizons is vital for the management of water resources. However, th...
Abstract Streamflow (Q flow ) prediction is one of the essential steps for the reliable and robust w...
The Brazilian energy matrix is predominantly composed of hydroelectric plants. In this way, it is im...
Modern unorganized machines - extreme learning machines and echo state networks - provide an elegant...
Rainfall-runoff modeling in ungauged basins continues to be a great hydrological research challenge....
Rainfall-runoff modelling is essential for short- and long-term decision-making in the water managem...
This study reports on the performance of two medium-range streamflow forecast models: (1) a multilay...
An early warning flood forecasting system that uses machine-learning models can be utilized for savi...
Various types of neural networks have been proposed in previous papers for applications in hydrologi...
Accurate river streamflow forecasts are a vital tool in the fields of water security, flood preparat...
The present study compares the performance of different architectures of recurrent neural networks i...
Accurate and reliable flow estimations are of great importance for hydroelectric power generation, f...
Streamow forecasting is essential for hydrological engineering. In accordance with theadvancement of...
Forecasting a hydrologic time series has been one of the most complicated tasks owing to the wide ra...
Forecasting a hydrologic time series has been one of the most complicated tasks owing to the wide ra...
Streamflow forecasting at short horizons is vital for the management of water resources. However, th...
Abstract Streamflow (Q flow ) prediction is one of the essential steps for the reliable and robust w...
The Brazilian energy matrix is predominantly composed of hydroelectric plants. In this way, it is im...
Modern unorganized machines - extreme learning machines and echo state networks - provide an elegant...
Rainfall-runoff modeling in ungauged basins continues to be a great hydrological research challenge....
Rainfall-runoff modelling is essential for short- and long-term decision-making in the water managem...
This study reports on the performance of two medium-range streamflow forecast models: (1) a multilay...
An early warning flood forecasting system that uses machine-learning models can be utilized for savi...
Various types of neural networks have been proposed in previous papers for applications in hydrologi...