AbstractThis paper proposes a method using neural networks to calibrate numerical models. The approach passes the output of numerical model to a neural network for calibration. An experimental study was conducted using a simulation of unheated and uncooled indoor temperature of a sports hall. The proposed neural network-based model improves the results and produces more accurate calibrated indoor temperature. Furthermore, the developed calibration method requires only measurements of indoor temperatures as the necessary inputs, thus significantly simplifying the calibration procedure needed to model the building performances
Artificial neural networks (ANNs) have been used for modelling the thermal dynamics of a building's ...
The importance of predicting building indoor temperature is inevitable to execute an effective energ...
In this paper, an artificial neural network model has been developed to predict the heating and cool...
AbstractThis paper proposes a method using neural networks to calibrate numerical models. The approa...
This paper proposes a method using neural networks to calibrate numerical models. The approach passe...
This paper presents a comparison between a physical model and an artificial neural network model (N...
ABSTRACT: Thermal models of buildings are helpful to forecast their energy use and to enhance the co...
[EN] Nowadays everyone should be aware of the importance of reducing CO2 emissions which produce the...
This study aims at developing an indoor temperature control method that could provide comfortable th...
Accurate short-term forecasts of building energy consumption are necessary for profitable demand res...
Buildings constitute more than 40% of total primary energy consumption worldwide and are bound to pl...
The development of machine learning techniques, particularly neural networks, combined with the deve...
This study aimed at developing an artificial-neural-network (ANN)-based model that can calculate the...
Many studies in Italy showed that buildings are responsible for about 40% of total energy consumptio...
In this paper, a study of calibration methods for a thermal performance model of a building is prese...
Artificial neural networks (ANNs) have been used for modelling the thermal dynamics of a building's ...
The importance of predicting building indoor temperature is inevitable to execute an effective energ...
In this paper, an artificial neural network model has been developed to predict the heating and cool...
AbstractThis paper proposes a method using neural networks to calibrate numerical models. The approa...
This paper proposes a method using neural networks to calibrate numerical models. The approach passe...
This paper presents a comparison between a physical model and an artificial neural network model (N...
ABSTRACT: Thermal models of buildings are helpful to forecast their energy use and to enhance the co...
[EN] Nowadays everyone should be aware of the importance of reducing CO2 emissions which produce the...
This study aims at developing an indoor temperature control method that could provide comfortable th...
Accurate short-term forecasts of building energy consumption are necessary for profitable demand res...
Buildings constitute more than 40% of total primary energy consumption worldwide and are bound to pl...
The development of machine learning techniques, particularly neural networks, combined with the deve...
This study aimed at developing an artificial-neural-network (ANN)-based model that can calculate the...
Many studies in Italy showed that buildings are responsible for about 40% of total energy consumptio...
In this paper, a study of calibration methods for a thermal performance model of a building is prese...
Artificial neural networks (ANNs) have been used for modelling the thermal dynamics of a building's ...
The importance of predicting building indoor temperature is inevitable to execute an effective energ...
In this paper, an artificial neural network model has been developed to predict the heating and cool...