Accurate prediction of buildings’ lifecycle energy consumption is a critical part in lifecycle assessment of residential buildings. Longitudinal variations in building conditions, weather conditions and building's service life can cause significant deviation of the prediction from the real lifecycle energy consumption. The objective is to improve the accuracy of lifecycle energy consumption prediction by properly modelling the longitudinal variations in residential energy consumption model using Markov chain based stochastic approach. A stochastic Markov model considering longitudinal uncertainties in building condition, degree days, and service life is developed: 1) Building's service life is estimated through Markov deterioration curve de...
Traditional building energy consumption calculation methods are characterised by rough approaches pr...
Internet of Things (IoT) is considered as one of the future disruptive technologies, which has the p...
Urban areas consume two-thirds of the world\u27s energy and account for 71% of global greenhouse gas...
Accurate prediction of buildings’ lifecycle energy consumption is a critical part in lifecycle asses...
The goal of this research is to develop a framework for improving the reliability of life cycle ener...
Thus far most studies of operational energy use of buildings fail to take a longitudinal view, or in...
In recent studies, the energy consumption of buildings takes up a staggering 40% of the total energy...
Abstract. Developing energy consumption models for smart buildings is important for studying demand ...
International audienceBuilding occupants are considered as a major source of uncertainty in energy m...
The increasing number of decentralized renewable energy sources together with the grow in overall el...
In the context of growing concerns over energy consumption and sustainability, accurate modelling of...
Energy is considered the most costly and scarce resource, and demand for it is increasing daily. Glo...
dissertationThe building sector currently contributes to approximately 73\% of the electricity consu...
The modelling and analysis of appliance energy use (AEU) of residential buildings are important for ...
Activity recognition and prediction in buildings can have multiple positive effects in buildings: im...
Traditional building energy consumption calculation methods are characterised by rough approaches pr...
Internet of Things (IoT) is considered as one of the future disruptive technologies, which has the p...
Urban areas consume two-thirds of the world\u27s energy and account for 71% of global greenhouse gas...
Accurate prediction of buildings’ lifecycle energy consumption is a critical part in lifecycle asses...
The goal of this research is to develop a framework for improving the reliability of life cycle ener...
Thus far most studies of operational energy use of buildings fail to take a longitudinal view, or in...
In recent studies, the energy consumption of buildings takes up a staggering 40% of the total energy...
Abstract. Developing energy consumption models for smart buildings is important for studying demand ...
International audienceBuilding occupants are considered as a major source of uncertainty in energy m...
The increasing number of decentralized renewable energy sources together with the grow in overall el...
In the context of growing concerns over energy consumption and sustainability, accurate modelling of...
Energy is considered the most costly and scarce resource, and demand for it is increasing daily. Glo...
dissertationThe building sector currently contributes to approximately 73\% of the electricity consu...
The modelling and analysis of appliance energy use (AEU) of residential buildings are important for ...
Activity recognition and prediction in buildings can have multiple positive effects in buildings: im...
Traditional building energy consumption calculation methods are characterised by rough approaches pr...
Internet of Things (IoT) is considered as one of the future disruptive technologies, which has the p...
Urban areas consume two-thirds of the world\u27s energy and account for 71% of global greenhouse gas...