In this paper, deep learning methods are compared with traditional statistical learning approaches for the purpose of accurately predicting the electrical energy consumption at the building level. Despite the fact that a wide range of machine learning methods have already been applied to energy prediction, deep learning methods certainly represent the state-of-the-art in artificial intelligence, and have been used with remarkable success in a wide range of applications. In particular, the use of Deep Belief Network (DBN), Multi Layer Perceptron and Artificial Neural Network methods are considered in this work. Furthermore, deep learning performance is compared with the most commonly used statistical learning methods, such as Support Vector ...
The increasing trend in energy demand is higher than the one from renewable generation, in the comin...
In the present era, due to technological advances, the problem of energy consumption has become one ...
In a future Smart Grid context, increasing challenges in managing the stochastic local energy supply...
In this paper, deep learning methods are compared with traditional statistical learning approaches f...
In this paper the more advanced, in comparison with traditional machine learning approaches, deep le...
To enhance the prediction performance for building energy consumption, this paper presents a modifie...
The consumption of energy in buildings has elicited the occurrence of many environmental problems su...
As with many other sectors, to improve the energy performance and energy neutrality requirements of ...
To improve the design of the electricity infrastructure and the efficient deployment of distributed ...
Building energy consumption prediction plays an important role in improving the energy utilization r...
Advances in metering technologies and emerging energy forecast strategies provide opportunities and ...
A literature survey is provided to summarize the existing approaches to building energy prediction. ...
Unprecedented high volumes of data are available in the smart grid context, facilitated by the growt...
One of the important discussions currently in building energy use is the prediction of energy consum...
The increasing trend in energy demand is higher than the one from renewable generation, in the comin...
In the present era, due to technological advances, the problem of energy consumption has become one ...
In a future Smart Grid context, increasing challenges in managing the stochastic local energy supply...
In this paper, deep learning methods are compared with traditional statistical learning approaches f...
In this paper the more advanced, in comparison with traditional machine learning approaches, deep le...
To enhance the prediction performance for building energy consumption, this paper presents a modifie...
The consumption of energy in buildings has elicited the occurrence of many environmental problems su...
As with many other sectors, to improve the energy performance and energy neutrality requirements of ...
To improve the design of the electricity infrastructure and the efficient deployment of distributed ...
Building energy consumption prediction plays an important role in improving the energy utilization r...
Advances in metering technologies and emerging energy forecast strategies provide opportunities and ...
A literature survey is provided to summarize the existing approaches to building energy prediction. ...
Unprecedented high volumes of data are available in the smart grid context, facilitated by the growt...
One of the important discussions currently in building energy use is the prediction of energy consum...
The increasing trend in energy demand is higher than the one from renewable generation, in the comin...
In the present era, due to technological advances, the problem of energy consumption has become one ...
In a future Smart Grid context, increasing challenges in managing the stochastic local energy supply...