In recent years, advanced control strategies based on Deep Reinforcement Learning (DRL) proved to be effective in optimizing the management of integrated energy systems in buildings, reducing energy costs and improving indoor comfort conditions when compared to traditional reactive controllers. However, the scalability and implementation of DRL controllers are still limited since they require a considerable amount of time before converging to a near-optimal solution. This issue is currently addressed in literature through the offline pre-training of the DRL agent. However this solution results in two main critical issues: (1) the need to develop a building surrogate model to perform the training task, and (2) the need to perform a fine-tuni...
Current building operations can be improved through smart predictive operation based on weather and ...
Building energy demand response is projected to be important in decarbonizing energy use. A demand r...
Domestic hot water accounts for approximately 15% of the total residential energy consumption in Eur...
This paper proposes a comparison between an online and offline Deep Reinforcement Learning (DRL) for...
Behind-the-meter distributed energy resources (DERs), including building solar photovoltaic (PV) tec...
This research is concerned with the novel application and investigation of ‘Soft Actor Critic’ based...
Behind-the-meter distributed energy resources (DERs), including building solar photovoltaic (PV) tec...
In this study, a controller based on deep reinforcement learning was tested for a residential buildi...
This paper presents a method for data- and model-driven control optimisation for industrial energy s...
The model-free Deep Reinforcement Learning (DRL) environment developed for this work attempts to min...
This paper presents a method for data- and model-driven control optimisation for industrial energy s...
Building controls are becoming more important and complicated due to the dynamic and stochastic ener...
In this work, Deep Reinforcement Learning (DRL) is implemented to control the supply water temperatu...
Building controls are becoming more important and complicated due to the dynamic and stochastic ener...
Energy optimization leveraging artificially intelligent algorithms has been proven effective. Howeve...
Current building operations can be improved through smart predictive operation based on weather and ...
Building energy demand response is projected to be important in decarbonizing energy use. A demand r...
Domestic hot water accounts for approximately 15% of the total residential energy consumption in Eur...
This paper proposes a comparison between an online and offline Deep Reinforcement Learning (DRL) for...
Behind-the-meter distributed energy resources (DERs), including building solar photovoltaic (PV) tec...
This research is concerned with the novel application and investigation of ‘Soft Actor Critic’ based...
Behind-the-meter distributed energy resources (DERs), including building solar photovoltaic (PV) tec...
In this study, a controller based on deep reinforcement learning was tested for a residential buildi...
This paper presents a method for data- and model-driven control optimisation for industrial energy s...
The model-free Deep Reinforcement Learning (DRL) environment developed for this work attempts to min...
This paper presents a method for data- and model-driven control optimisation for industrial energy s...
Building controls are becoming more important and complicated due to the dynamic and stochastic ener...
In this work, Deep Reinforcement Learning (DRL) is implemented to control the supply water temperatu...
Building controls are becoming more important and complicated due to the dynamic and stochastic ener...
Energy optimization leveraging artificially intelligent algorithms has been proven effective. Howeve...
Current building operations can be improved through smart predictive operation based on weather and ...
Building energy demand response is projected to be important in decarbonizing energy use. A demand r...
Domestic hot water accounts for approximately 15% of the total residential energy consumption in Eur...