In a future Smart Grid context, increasing challenges in managing the stochastic local energy supply and demand are expected. This increased the need of more accurate energy prediction methods in order to support further complex decision-making processes. Although many methods aiming to predict the energy consumption exist, all these require labelled data, such as historical or simulated data. Still, such datasets are not always available under the emerging smart grid transition and complex people behaviour. Our approach goes beyond the state-of-the-art energy prediction methods in that it does not require labelled data. Firstly, two Reinforcement Learning algorithms are investigated in order to model the building energy consumption. Second...
The interconnection between the Smart Grid and Building Energy Management Systems involves complex i...
Data-driven modeling emerges as a promising approach to predicting building electricity consumption ...
In this paper we propose an simple digital learning platform for flexible energy detection using dat...
In a future Smart Grid context, increasing challenges in managing the stochastic local energy supply...
AbstractIn a future Smart Grid context, increasing challenges in managing the stochastic local energ...
Prediction of building energy consumption is a fundamental problem in the smart grid context. Unprec...
Human activities and city routines follow patterns. Transfer learning can help achieve scalable solu...
To improve the design of the electricity infrastructure and the efficient deployment of distributed ...
To enhance the prediction performance for building energy consumption, this paper presents a modifie...
With the development of data-driven techniques, district-scale building energy prediction has attrac...
In this paper, deep learning methods are compared with traditional statistical learning approaches f...
Unprecedented high volume of data is available with the upward growth of the advanced metering infra...
The interconnection between the Smart Grid and Building Energy Management Systems involves complex i...
Data-driven modeling emerges as a promising approach to predicting building electricity consumption ...
In this paper we propose an simple digital learning platform for flexible energy detection using dat...
In a future Smart Grid context, increasing challenges in managing the stochastic local energy supply...
AbstractIn a future Smart Grid context, increasing challenges in managing the stochastic local energ...
Prediction of building energy consumption is a fundamental problem in the smart grid context. Unprec...
Human activities and city routines follow patterns. Transfer learning can help achieve scalable solu...
To improve the design of the electricity infrastructure and the efficient deployment of distributed ...
To enhance the prediction performance for building energy consumption, this paper presents a modifie...
With the development of data-driven techniques, district-scale building energy prediction has attrac...
In this paper, deep learning methods are compared with traditional statistical learning approaches f...
Unprecedented high volume of data is available with the upward growth of the advanced metering infra...
The interconnection between the Smart Grid and Building Energy Management Systems involves complex i...
Data-driven modeling emerges as a promising approach to predicting building electricity consumption ...
In this paper we propose an simple digital learning platform for flexible energy detection using dat...