International audienceWith the emergence of the Internet of Things (IoT) applications, a huge amount of information is generated to help the optimization of operational cellular networks, smart transportation, and energy management systems. Applying Artificial Intelligence approaches to exploit this data seems to be promising. In this paper, we propose a dual deep neural network architecture. It is used to classify time series and to predict future data. It is essentially based on Long Short Term Memory (LSTM) algorithms for accurate time series prediction and on deep neural network, classifiers to classify input streams. It is shown to work on different domains (cellular, energy management, and transportation systems). Cloud architecture i...
In the modern power grid framework, Renewable Energy Sources must be integrated into the existing en...
Here, we propose a new deep learning scheme to solve the energy time series prediction problem. The ...
This paper will be covering AI techniques in the prediction of climate change data over the course o...
International audienceWith the emergence of the Internet of Things (IoT) applications, a huge amount...
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...
Our cities face non-stop growth in population and infrastructures and require more energy every day....
A novel deep learning approach is proposed for the predictive analysis of trends in energy related t...
Short-term photovoltaic (PV) energy generation forecasting models are important, stabilizing the pow...
One of the relevant factors in smart energy management is the ability to predict the consumption of ...
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 ...
Nature brings time series data everyday and everywhere, for example, weather data, physiological sig...
The integration of solar energy with a power system brings great economic and environmental benefits...
We propose a deep learning approach for multivariate forecasting of energy time series. It is develo...
In the modern power grid framework, Renewable Energy Sources must be integrated into the existing en...
Here, we propose a new deep learning scheme to solve the energy time series prediction problem. The ...
This paper will be covering AI techniques in the prediction of climate change data over the course o...
International audienceWith the emergence of the Internet of Things (IoT) applications, a huge amount...
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...
Our cities face non-stop growth in population and infrastructures and require more energy every day....
A novel deep learning approach is proposed for the predictive analysis of trends in energy related t...
Short-term photovoltaic (PV) energy generation forecasting models are important, stabilizing the pow...
One of the relevant factors in smart energy management is the ability to predict the consumption of ...
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 ...
Nature brings time series data everyday and everywhere, for example, weather data, physiological sig...
The integration of solar energy with a power system brings great economic and environmental benefits...
We propose a deep learning approach for multivariate forecasting of energy time series. It is develo...
In the modern power grid framework, Renewable Energy Sources must be integrated into the existing en...
Here, we propose a new deep learning scheme to solve the energy time series prediction problem. The ...
This paper will be covering AI techniques in the prediction of climate change data over the course o...