This paper addresses the endemic problem of the gap between predicted and actual energy performance in public buildings. A system engineering approach is used to characterize energy performance factoring in building intrinsic properties, occupancy patterns, environmental conditions, as well as available control variables and their respective ranges. Due to the lack of historical data, a theoretical simulation model is considered. A semantic mapping process is proposed using principle component analysis (PCA) and multi regression analysis (MRA) to determine the governing (i.e., most sensitive) variables to reduce the energy gap with a (near) real-time capability. Further, an artificial neural network (ANN) is developed to learn the patterns ...
The energy efficiency dataset used to support the findings of this study has been deposited in the G...
Buildings are under the scope of environmentalists since they are the biggest energy consumers and p...
In recent years, surrogate modelling approaches have been implemented to overcome the time and compu...
This paper addresses the endemic problem of the gap between predicted and actual energy performance ...
How to predict building energy performance with low computational times and good reliability? The st...
Energy consumption has been increasing steadily due to globalization and industrialization. Studies ...
Due to their capacity to improve energy consumption performance, intelligent applications have recen...
The major objective of this chapter is to illustrate how artificial neural networks (ANNs) and genet...
Buildings account for a substantial proportion of global energy consumption and global greenhouse ga...
The reliable assessment of building energy performance requires significant computational times. The...
Energy consumption has been increasing steadily due to globalization and industrialization. Studies ...
Abstract: Energy consumption has been increasing steadily due to globalization and industrialization...
The energy performance is a relevant matter in the life cycle management of buildings in order to gu...
The energy efficiency dataset used to support the findings of this study has been deposited in the G...
Buildings are under the scope of environmentalists since they are the biggest energy consumers and p...
In recent years, surrogate modelling approaches have been implemented to overcome the time and compu...
This paper addresses the endemic problem of the gap between predicted and actual energy performance ...
How to predict building energy performance with low computational times and good reliability? The st...
Energy consumption has been increasing steadily due to globalization and industrialization. Studies ...
Due to their capacity to improve energy consumption performance, intelligent applications have recen...
The major objective of this chapter is to illustrate how artificial neural networks (ANNs) and genet...
Buildings account for a substantial proportion of global energy consumption and global greenhouse ga...
The reliable assessment of building energy performance requires significant computational times. The...
Energy consumption has been increasing steadily due to globalization and industrialization. Studies ...
Abstract: Energy consumption has been increasing steadily due to globalization and industrialization...
The energy performance is a relevant matter in the life cycle management of buildings in order to gu...
The energy efficiency dataset used to support the findings of this study has been deposited in the G...
Buildings are under the scope of environmentalists since they are the biggest energy consumers and p...
In recent years, surrogate modelling approaches have been implemented to overcome the time and compu...