Building databases are important assets when estimating and planning for national energy savings from energy retrofitting. However, databases often lack information on building characteristics needed to determine the feasibility of specific energy conservation measures. In this paper, machine learning methods are used to enrich the Swedish database of Energy Performance Certificates with building characteristics relevant for a chosen set of energy retrofitting packages. The study is limited to the Swedish multifamily building stock constructed between 1945 and 1975, as these buildings are facing refurbishment needs that advantageously can be combined with energy retrofitting. In total, 514 ocular observations were conducted in Google Street...
In recent years, new technologies, such as Artificial Intelligence, are emerging to improve decision...
How to predict building energy performance with low computational times and good reliability? The st...
How to predict building energy performance with low computational times and good reliability? The st...
Building databases are important assets when estimating and planning for national energy savings fro...
Building databases are important assets when estimating and planning for national energy savings fro...
Building databases are important assets when estimating and planning for national energy savings fro...
Building sector is shown as a huge energy consumer worldwide. Therefore, a thorough understanding of...
Building operation is responsible for 28% of the world’s carbon emissions. In this context, establis...
AbstractBuilding energy conservation measures (ECMs) can significantly lower greenhouse gas (GHG) em...
This thesis was previously held under moratorium from 29th July 2020 to 29th July 2022.In the UK, on...
This thesis was previously held under moratorium from 29th July 2020 to 29th July 2022.In the UK, on...
Buildings account for 40% of the energy consumption and 31% of the CO2 emissions in the United State...
Buildings account for 40% of the energy consumption and 31% of the CO2 emissions in the United State...
The study of energy consumption across various building clusters offers a path to discerning intrica...
In recent years, new technologies, such as Artificial Intelligence, are emerging to improve decision...
In recent years, new technologies, such as Artificial Intelligence, are emerging to improve decision...
How to predict building energy performance with low computational times and good reliability? The st...
How to predict building energy performance with low computational times and good reliability? The st...
Building databases are important assets when estimating and planning for national energy savings fro...
Building databases are important assets when estimating and planning for national energy savings fro...
Building databases are important assets when estimating and planning for national energy savings fro...
Building sector is shown as a huge energy consumer worldwide. Therefore, a thorough understanding of...
Building operation is responsible for 28% of the world’s carbon emissions. In this context, establis...
AbstractBuilding energy conservation measures (ECMs) can significantly lower greenhouse gas (GHG) em...
This thesis was previously held under moratorium from 29th July 2020 to 29th July 2022.In the UK, on...
This thesis was previously held under moratorium from 29th July 2020 to 29th July 2022.In the UK, on...
Buildings account for 40% of the energy consumption and 31% of the CO2 emissions in the United State...
Buildings account for 40% of the energy consumption and 31% of the CO2 emissions in the United State...
The study of energy consumption across various building clusters offers a path to discerning intrica...
In recent years, new technologies, such as Artificial Intelligence, are emerging to improve decision...
In recent years, new technologies, such as Artificial Intelligence, are emerging to improve decision...
How to predict building energy performance with low computational times and good reliability? The st...
How to predict building energy performance with low computational times and good reliability? The st...