Multisource energy data, including from distributed energy resources and its multivariate nature, necessitate the integration of robust data predictive frameworks to minimise prediction error. This work presents a hybrid deep learning framework to accurately predict the energy consumption of different building types, both commercial and domestic, spanning different countries, including Canada and the UK. Specifically, we propose architectures comprising convolutional neural network (CNN), an autoencoder (AE) with bidirectional long short-term memory (LSTM), and bidirectional LSTM BLSTM). The CNN layer extracts important features from the dataset and the AE-BLSTM and LSTM layers are used for prediction. We use the individual household electr...
In this paper the more advanced, in comparison with traditional machine learning approaches, deep le...
Building energy consumption prediction plays an important role in improving the energy utilization r...
COVID-19 has continuously influenced energy security and caused an enormous impact on human life and...
Multisource energy data, including from distributed energy resources and its multivariate nature, ne...
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...
In this paper, deep learning methods are compared with traditional statistical learning approaches f...
Industrial and building sectors demand efficient smart energy strategies, techniques of optimization...
The consumption of energy in buildings has elicited the occurrence of many environmental problems su...
Energy consumption prediction has become an integral part of a smart and sustainable environment. Wi...
Unprecedented high volume of data is available with the upward growth of the advanced metering infra...
The energy manufacturers are required to produce an accurate amount of energy by meeting the energy ...
Our cities face non-stop growth in population and infrastructures and require more energy every day....
In this paper the more advanced, in comparison with traditional machine learning approaches, deep le...
Building energy consumption prediction plays an important role in improving the energy utilization r...
COVID-19 has continuously influenced energy security and caused an enormous impact on human life and...
Multisource energy data, including from distributed energy resources and its multivariate nature, ne...
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...
In this paper, deep learning methods are compared with traditional statistical learning approaches f...
Industrial and building sectors demand efficient smart energy strategies, techniques of optimization...
The consumption of energy in buildings has elicited the occurrence of many environmental problems su...
Energy consumption prediction has become an integral part of a smart and sustainable environment. Wi...
Unprecedented high volume of data is available with the upward growth of the advanced metering infra...
The energy manufacturers are required to produce an accurate amount of energy by meeting the energy ...
Our cities face non-stop growth in population and infrastructures and require more energy every day....
In this paper the more advanced, in comparison with traditional machine learning approaches, deep le...
Building energy consumption prediction plays an important role in improving the energy utilization r...
COVID-19 has continuously influenced energy security and caused an enormous impact on human life and...