This paper aims to demonstrate an empirical approach to building energy modelling (BEM). The study presented here uses machine learning methods with metered data in substitute to detailed on site surveys in conventional BEM simulations. Key advantages of the machine learning approach are the reduced site survey time and having a site calibrated model, giving a much shorter lead in and pre-calibrated model for the site. The increased availability of metered data in modern buildings makes this type of approach more viable than in the past. In demonstrating this methodology, this paper will choose to predict electrical cooling energy use for the Information Commons building at the University of Sheffield, in response to projected future and past...
Data-driven building energy modelling techniques have proven to be effective in multiple application...
Future energy use prediction in buildings plays an important role in planning, managing, and saving ...
International audienceFocusing on up-to-date artificial intelligence models to solve building energy...
Building energy predictions are playing an important role in steering the design towards the require...
The current Building Energy Performance Simulation (BEPS) tools are based on first principles. For t...
Energy consumption prediction for building energy management systems (BEMS) is one of the key factor...
Climate change is a shift in nature yet a devastating phenomenon, mainly caused by human activities,...
Given the urgency of climate change, development of fast and reliable methods is essential to unders...
International audienceIn the European Union, the building sector is one of the largest energy consum...
Building sector is shown as a huge energy consumer worldwide. Therefore, a thorough understanding of...
Advances in metering technologies and emerging energy forecast strategies provide opportunities and ...
This paper demonstrates how machine learning is used to measure energy savings from energy conservat...
Machine learning methods can be used to help design energy-efficient buildings reducing energy loads...
Energy consumption estimation for building energy management systems (BEMS) is one of the key factor...
Hospitals are large buildings that consume a great amount of energy mostly due to their continuous e...
Data-driven building energy modelling techniques have proven to be effective in multiple application...
Future energy use prediction in buildings plays an important role in planning, managing, and saving ...
International audienceFocusing on up-to-date artificial intelligence models to solve building energy...
Building energy predictions are playing an important role in steering the design towards the require...
The current Building Energy Performance Simulation (BEPS) tools are based on first principles. For t...
Energy consumption prediction for building energy management systems (BEMS) is one of the key factor...
Climate change is a shift in nature yet a devastating phenomenon, mainly caused by human activities,...
Given the urgency of climate change, development of fast and reliable methods is essential to unders...
International audienceIn the European Union, the building sector is one of the largest energy consum...
Building sector is shown as a huge energy consumer worldwide. Therefore, a thorough understanding of...
Advances in metering technologies and emerging energy forecast strategies provide opportunities and ...
This paper demonstrates how machine learning is used to measure energy savings from energy conservat...
Machine learning methods can be used to help design energy-efficient buildings reducing energy loads...
Energy consumption estimation for building energy management systems (BEMS) is one of the key factor...
Hospitals are large buildings that consume a great amount of energy mostly due to their continuous e...
Data-driven building energy modelling techniques have proven to be effective in multiple application...
Future energy use prediction in buildings plays an important role in planning, managing, and saving ...
International audienceFocusing on up-to-date artificial intelligence models to solve building energy...