Adaptive Façades (AFs) have proven to be effective as a building envelope that can enhance energy effi- ciency and thermal comfort. However, evaluating the performance of these AFs using the current building performance simulation (BPS) tools is complex, time-consuming, and computationally intensive. These limitations can be overcome by using a machine learning (ML) model as a method to assess the AF system efficiently during the early design stage. This study presents an alternative approach using an Artificial Neural Network (ANN) model that can predict the hourly cooling loads of AF in significantly less time compared to BPS. To construct the model, a generative parametric simulation of office tower spaces with an AF shading system were ...
AbstractThis study presents building energy forecasting methodology for cooling load for three insti...
Energy consumption in buildings especially in offices is alarming and prompts the desire for more en...
To accurately predict hourly day-ahead building cooling demand, year-round historical weather profil...
Adaptive Façades (AFs) have proven to be effective as a building envelope that can enhance energy ef...
Buildings consume approximately 40% of the world's primary energy, and half of this energy demand st...
Predicating the required building energy when it is in the design stage and before being constructed...
Buildings energy consumption is growing gradually and put away around 40% of total energy use. Predi...
In this paper, an artificial neural network model has been developed to predict the heating and cool...
Machine learning (ML) has proven to be an effective technique serving as a predictive surrogate mode...
The energy performance is a relevant matter in the life cycle management of buildings in order to gu...
This paper explores total cooling load during summers and total carbon emissions of a six storey bui...
Building cooling load prediction is one of the key elements in the energy conservation achievements....
Artificial neural networks (ANNs) have been used for the prediction of the energy consumption of a p...
[EN] Nowadays everyone should be aware of the importance of reducing CO2 emissions which produce the...
How to predict building energy performance with low computational times and good reliability? The st...
AbstractThis study presents building energy forecasting methodology for cooling load for three insti...
Energy consumption in buildings especially in offices is alarming and prompts the desire for more en...
To accurately predict hourly day-ahead building cooling demand, year-round historical weather profil...
Adaptive Façades (AFs) have proven to be effective as a building envelope that can enhance energy ef...
Buildings consume approximately 40% of the world's primary energy, and half of this energy demand st...
Predicating the required building energy when it is in the design stage and before being constructed...
Buildings energy consumption is growing gradually and put away around 40% of total energy use. Predi...
In this paper, an artificial neural network model has been developed to predict the heating and cool...
Machine learning (ML) has proven to be an effective technique serving as a predictive surrogate mode...
The energy performance is a relevant matter in the life cycle management of buildings in order to gu...
This paper explores total cooling load during summers and total carbon emissions of a six storey bui...
Building cooling load prediction is one of the key elements in the energy conservation achievements....
Artificial neural networks (ANNs) have been used for the prediction of the energy consumption of a p...
[EN] Nowadays everyone should be aware of the importance of reducing CO2 emissions which produce the...
How to predict building energy performance with low computational times and good reliability? The st...
AbstractThis study presents building energy forecasting methodology for cooling load for three insti...
Energy consumption in buildings especially in offices is alarming and prompts the desire for more en...
To accurately predict hourly day-ahead building cooling demand, year-round historical weather profil...