Accurate building energy prediction is vital to develop optimal control strategies to enhance building energy efficiency and energy flexibility. In recent years, the data-driven approach based on machine learning algorithms has been widely adopted for building energy prediction due to the availability of massive data in building automation systems (BASs), which automatically collect and store real-time building operational data. For new buildings and most existing buildings without installing advanced BASs, there is a lack of sufficient data to train data-driven predictive models. Transfer learning is a promising method to develop accurate and reliable data-driven building energy prediction models with limited training data by taking advant...
How to predict building energy performance with low computational times and good reliability? The st...
Smart buildings play a crucial role toward decarbonizing society, as globally buildings emit about o...
Advances in metering technologies and emerging energy forecast strategies provide opportunities and ...
Data-driven methods have gained increasing popularity due to their high-convenience and high-accurac...
A literature survey is provided to summarize the existing approaches to building energy prediction. ...
The consumption of energy in buildings has elicited the occurrence of many environmental problems su...
Advances in metering technologies and emerging energy forecast strategies provide opportunities and ...
Future energy use prediction in buildings plays an important role in planning, managing, and saving ...
In recent years deep neural networks have been proposed as a lightweight data-driven model to captur...
Human activities and city routines follow patterns. Transfer learning can help achieve scalable solu...
While most of the existing artificial neural networks (ANN) models for building energy prediction ar...
Energy usage within buildings in the United States is a very important topic because of the current ...
As with many other sectors, to improve the energy performance and energy neutrality requirements of ...
Buildings are responsible for over half the energy use in this country. Building energy use can be r...
With the development of data-driven techniques, district-scale building energy prediction has attrac...
How to predict building energy performance with low computational times and good reliability? The st...
Smart buildings play a crucial role toward decarbonizing society, as globally buildings emit about o...
Advances in metering technologies and emerging energy forecast strategies provide opportunities and ...
Data-driven methods have gained increasing popularity due to their high-convenience and high-accurac...
A literature survey is provided to summarize the existing approaches to building energy prediction. ...
The consumption of energy in buildings has elicited the occurrence of many environmental problems su...
Advances in metering technologies and emerging energy forecast strategies provide opportunities and ...
Future energy use prediction in buildings plays an important role in planning, managing, and saving ...
In recent years deep neural networks have been proposed as a lightweight data-driven model to captur...
Human activities and city routines follow patterns. Transfer learning can help achieve scalable solu...
While most of the existing artificial neural networks (ANN) models for building energy prediction ar...
Energy usage within buildings in the United States is a very important topic because of the current ...
As with many other sectors, to improve the energy performance and energy neutrality requirements of ...
Buildings are responsible for over half the energy use in this country. Building energy use can be r...
With the development of data-driven techniques, district-scale building energy prediction has attrac...
How to predict building energy performance with low computational times and good reliability? The st...
Smart buildings play a crucial role toward decarbonizing society, as globally buildings emit about o...
Advances in metering technologies and emerging energy forecast strategies provide opportunities and ...