In 2022, as a result of the historically exceptional high temperatures that have been observed this summer in several parts of China, particularly in the province of Sichuan, residential demand for energy has increased. Up to 70% of Sichuan’s electricity comes from hydropower, thus creating a sensible and practical reservoir scheduling plan is essential to maximizing reservoir power generating efficiency. However, classical optimization, such as back propagation (BP) neural network, does not take into account the correlation of samples in time while generating reservoir scheduling rules. We proposed a prediction model based on LSTM neural network coupled with wavelet transformation (WT-LSTM) to address the problem. In order to extract the r...
Forecasting time series with extreme events has been a challenging and prevalent research topic, esp...
The intermittence and fluctuation of photovoltaic power generation seriously affect output power rel...
Streamow forecasting is essential for hydrological engineering. In accordance with theadvancement of...
In this paper we combine wavelet decomposition and recurrent neural networks to provide fast and acc...
In the past, reservoir engineers used numerical simulation or reservoir engineering methods to predi...
We explore the use of deep reinforcement learning to provide strategies for long term scheduling of ...
Reservoirs and dams are vital human-built infrastructures that play essential roles in flood control...
The short-term hydrothermal scheduling (STHTS) problem has paramount importance in an interconnected...
This study coupled the ensemble learning method with residual error (RE) correction to propose a mor...
Background: The purpose of the paper is to propose different arrangements of neural networks for sho...
Currently the authorities in the field of water resource management for irrigation and hydro power e...
Considering the high random and non-static property of the rainfall-runoff process, lots of models a...
Abstract: Based on the multi-time scale and the nonlinear characteristics of the observed time serie...
International audienceSince electricity plays a crucial role in countries' industrial infrastructure...
Machine learning models have been effectively applied to predict certain variable in several enginee...
Forecasting time series with extreme events has been a challenging and prevalent research topic, esp...
The intermittence and fluctuation of photovoltaic power generation seriously affect output power rel...
Streamow forecasting is essential for hydrological engineering. In accordance with theadvancement of...
In this paper we combine wavelet decomposition and recurrent neural networks to provide fast and acc...
In the past, reservoir engineers used numerical simulation or reservoir engineering methods to predi...
We explore the use of deep reinforcement learning to provide strategies for long term scheduling of ...
Reservoirs and dams are vital human-built infrastructures that play essential roles in flood control...
The short-term hydrothermal scheduling (STHTS) problem has paramount importance in an interconnected...
This study coupled the ensemble learning method with residual error (RE) correction to propose a mor...
Background: The purpose of the paper is to propose different arrangements of neural networks for sho...
Currently the authorities in the field of water resource management for irrigation and hydro power e...
Considering the high random and non-static property of the rainfall-runoff process, lots of models a...
Abstract: Based on the multi-time scale and the nonlinear characteristics of the observed time serie...
International audienceSince electricity plays a crucial role in countries' industrial infrastructure...
Machine learning models have been effectively applied to predict certain variable in several enginee...
Forecasting time series with extreme events has been a challenging and prevalent research topic, esp...
The intermittence and fluctuation of photovoltaic power generation seriously affect output power rel...
Streamow forecasting is essential for hydrological engineering. In accordance with theadvancement of...