Most existing commercial building energy management systems (BEMS) are reactive rule-based. This means that an action is produced when an event occurs. In consequence, these systems cannot predict future scenarios and anticipate events to optimize building operation. This paper presents the procedure of implementing a predictive control strategy in a commercial BEMS for boilers in buildings, and describes the results achieved. The proposed control is based on a neural network that turns on the boiler each day at the optimum time, according to the surrounding environment, to achieve thermal comfort levels at the beginning of the working day. The control strategy presented in this paper is compared with the current control strategy implemente...
This study applies a simulation- and optimization-based framework using artificial neural networks f...
In the last few years, the reduction of energy consumption and pollution became mandatory. It became...
The goal of maintaining users' thermal comfort conditions in indoor environments may require complex...
Most existing commercial building energy management systems (BEMS) are reactive rule-based. This mea...
Simple neural network (NN) architecture is a reliable tool to transform reactive rule-based systems ...
Starting from an application of a real medium-size university building, the present paper focuses on...
Prefabricated Movable Buildings (PMBs) are gaining great attention in several applications, such as ...
The paper addresses the problem of controlling a Heating Ventilation and Air Conditioning (HVAC) sys...
The paper describes a predictive and adaptive heating controller, using artificial neural networks t...
L'utilisation de régulation prédictive permet de diminuer la consommation d'énergie des bâtiments ré...
Energy consumption in buildings is either directly or indirectly related to HVAC systems. As buildin...
International audienceModel Predictive control is an advanced control tech-nique that has been used ...
This paper presents a hybrid model predictive control (MPC) scheme for energy-saving control in comm...
Buildings account for a substantial proportion of global energy consumption and global greenhouse ga...
International audienceThermally Activated Building Systems (TABS) are difficult to control due to th...
This study applies a simulation- and optimization-based framework using artificial neural networks f...
In the last few years, the reduction of energy consumption and pollution became mandatory. It became...
The goal of maintaining users' thermal comfort conditions in indoor environments may require complex...
Most existing commercial building energy management systems (BEMS) are reactive rule-based. This mea...
Simple neural network (NN) architecture is a reliable tool to transform reactive rule-based systems ...
Starting from an application of a real medium-size university building, the present paper focuses on...
Prefabricated Movable Buildings (PMBs) are gaining great attention in several applications, such as ...
The paper addresses the problem of controlling a Heating Ventilation and Air Conditioning (HVAC) sys...
The paper describes a predictive and adaptive heating controller, using artificial neural networks t...
L'utilisation de régulation prédictive permet de diminuer la consommation d'énergie des bâtiments ré...
Energy consumption in buildings is either directly or indirectly related to HVAC systems. As buildin...
International audienceModel Predictive control is an advanced control tech-nique that has been used ...
This paper presents a hybrid model predictive control (MPC) scheme for energy-saving control in comm...
Buildings account for a substantial proportion of global energy consumption and global greenhouse ga...
International audienceThermally Activated Building Systems (TABS) are difficult to control due to th...
This study applies a simulation- and optimization-based framework using artificial neural networks f...
In the last few years, the reduction of energy consumption and pollution became mandatory. It became...
The goal of maintaining users' thermal comfort conditions in indoor environments may require complex...