In smart grids and microgrids, time series prediction is a fundamental tool for enabling intelligent energy resource management and advanced interactions between heterogeneous agents. In this work, we propose a solution to the energy forecasting problem based on two machine learning techniques: Convolutional Neural Network and Long Short-Term Memory Network. These techniques are combined with a new embedding format to appropriately feed the time series to the stacked network architecture. The resulting novel deep learning scheme is able to retrieve information from the data by inferring time dependent correlation structures. The model is validated using real-world examples, showing good performances with a 3-days forecasting horizon
Industrial and building sectors demand efficient smart energy strategies, techniques of optimization...
Nowadays, solving prediction problems in green computing is an open and challenging task, for which ...
Short-term photovoltaic (PV) energy generation forecasting models are important, stabilizing the pow...
In smart grids and microgrids, time series prediction is a fundamental tool for enabling intelligent...
In smart grids and microgrids, time series prediction is a fundamental tool for enabling intelligent...
Here, we propose a new deep learning scheme to solve the energy time series prediction problem. The ...
In this paper, a new approach on energy time series prediction is carried out. We propose a deep lea...
We propose a deep learning approach for multivariate forecasting of energy time series. It is develo...
Here, we propose a new deep learning scheme to solve the energy time series prediction problem. The...
A novel deep learning approach in proposed in this paper for multivariate prediction of energy time ...
The energy manufacturers are required to produce an accurate amount of energy by meeting the energy ...
Probabilistic forecasts of electrical loads and photovoltaic generation provide a family of methods ...
In the modern power grid framework, Renewable Energy Sources must be integrated into the existing en...
Short- and long-term forecasts have become increasingly important since the rise of highly competiti...
Forecasting energy demand has been a critical process in various decision support systems regarding ...
Industrial and building sectors demand efficient smart energy strategies, techniques of optimization...
Nowadays, solving prediction problems in green computing is an open and challenging task, for which ...
Short-term photovoltaic (PV) energy generation forecasting models are important, stabilizing the pow...
In smart grids and microgrids, time series prediction is a fundamental tool for enabling intelligent...
In smart grids and microgrids, time series prediction is a fundamental tool for enabling intelligent...
Here, we propose a new deep learning scheme to solve the energy time series prediction problem. The ...
In this paper, a new approach on energy time series prediction is carried out. We propose a deep lea...
We propose a deep learning approach for multivariate forecasting of energy time series. It is develo...
Here, we propose a new deep learning scheme to solve the energy time series prediction problem. The...
A novel deep learning approach in proposed in this paper for multivariate prediction of energy time ...
The energy manufacturers are required to produce an accurate amount of energy by meeting the energy ...
Probabilistic forecasts of electrical loads and photovoltaic generation provide a family of methods ...
In the modern power grid framework, Renewable Energy Sources must be integrated into the existing en...
Short- and long-term forecasts have become increasingly important since the rise of highly competiti...
Forecasting energy demand has been a critical process in various decision support systems regarding ...
Industrial and building sectors demand efficient smart energy strategies, techniques of optimization...
Nowadays, solving prediction problems in green computing is an open and challenging task, for which ...
Short-term photovoltaic (PV) energy generation forecasting models are important, stabilizing the pow...