Nowadays, solving prediction problems in green computing is an open and challenging task, for which solutions based on deep learning are studied. In this work, we present a forecasting algorithm based on Long Short-Term Memory networks applied to renewable energy sources time series prediction. We make use of an encoder-decoder structure to extract useful representative sequence data, employing a stacked LSTM architecture for data embedding and successive prediction. By comparing the performance of the proposed forecasting scheme with a classical twolayer LSTM structure, we are able to asses the performance of the former as a robust tool for solving prediction problems in the green computing framework
Load forecasting has become crucial in recent years and become popular in forecasting area. Many dif...
Smart grid and smart metering technologies allow residential consumers to monitor and control electr...
Here, we propose a new deep learning scheme to solve the energy time series prediction problem. The ...
In this paper, a novel approach for the multivariate prediction of energy time series is presented. ...
In smart grids and microgrids, time series prediction is a fundamental tool for enabling intelligent...
We propose a deep learning approach for multivariate forecasting of energy time series. It is develo...
In smart grids and microgrids, time series prediction is a fundamental tool for enabling intelligent...
Deep learning has proven to be a valued contributor to recent technological advancements within ener...
This paper aims to develop the long short-term memory (LSTM) network modelling strategy based on dee...
In the modern power grid framework, Renewable Energy Sources must be integrated into the existing en...
Power system time series forecasting is an essential part of smart electric grid. It enhances the r...
Time series prediction can be generalized as a process that extracts useful information from histori...
An efficient energy management system is integrated with the power grid to collect information about...
This study explores the implementation of advanced machine learning techniques to enhance the integr...
6th IEEE International Energy Conference (IEEE ENERGYCON) - Energy Transition for Developing Smart S...
Load forecasting has become crucial in recent years and become popular in forecasting area. Many dif...
Smart grid and smart metering technologies allow residential consumers to monitor and control electr...
Here, we propose a new deep learning scheme to solve the energy time series prediction problem. The ...
In this paper, a novel approach for the multivariate prediction of energy time series is presented. ...
In smart grids and microgrids, time series prediction is a fundamental tool for enabling intelligent...
We propose a deep learning approach for multivariate forecasting of energy time series. It is develo...
In smart grids and microgrids, time series prediction is a fundamental tool for enabling intelligent...
Deep learning has proven to be a valued contributor to recent technological advancements within ener...
This paper aims to develop the long short-term memory (LSTM) network modelling strategy based on dee...
In the modern power grid framework, Renewable Energy Sources must be integrated into the existing en...
Power system time series forecasting is an essential part of smart electric grid. It enhances the r...
Time series prediction can be generalized as a process that extracts useful information from histori...
An efficient energy management system is integrated with the power grid to collect information about...
This study explores the implementation of advanced machine learning techniques to enhance the integr...
6th IEEE International Energy Conference (IEEE ENERGYCON) - Energy Transition for Developing Smart S...
Load forecasting has become crucial in recent years and become popular in forecasting area. Many dif...
Smart grid and smart metering technologies allow residential consumers to monitor and control electr...
Here, we propose a new deep learning scheme to solve the energy time series prediction problem. The ...