Model Predictive Control is an energy efficient climate control strategy in buildings. However, the effort associated with physics-based modelling seems to prevent widespread application in residential buildings. Applying machine-learning algorithms on historical data promises efficient generation of predictive models for control. In a recent experimental study, Data Predictive Control based on random forests and linear models outperformed a baseline controller during cooling season. In this paper, the approach is benchmarked against hysteresis control and conventional Model Predictive Control based on an RC-network model during heating season. Data Predictive Control shows promising results in terms of energy consumption and thermal comfor...
Data has the potential to transform our environments for the better if utilized to its full potentia...
International audienceAs the most energy-intensive economic sector, the building industry offers a s...
Building Simulation and Optimization 2020, Virtual Conference, 21-22 September 2020Identifying physi...
The building sector globally accounts for more than one third of the nal energy consumption. In indu...
Decisions on how to best operate large complex plants such as natural gas processing, oil refineries...
Model-based Predictive Control (MPC) is an effective solution to improve building controls. It consi...
Model-based Predictive Control (MPC) is an effective solution to improve building controls. It consi...
The implementation of model predictive controls (MPCs) in buildings represents an important opportun...
The implementation of model predictive controls (MPCs) in buildings represents an important opportun...
Thermally Activated Building Systems (TABS) are difficult to control due to the time lag between the...
The implementation of model predictive controls (MPCs) in buildings represents an important opportun...
This paper presents an investigation of how Model Predictive Control (MPC) and weather predictions c...
The implementation of model predictive controls (MPCs) in buildings represents an important opportun...
Despite the increasing capabilities of information technologies for data acquisition and processing,...
International audienceIn energy-efficient buildings, the interactions and coupling effects between t...
Data has the potential to transform our environments for the better if utilized to its full potentia...
International audienceAs the most energy-intensive economic sector, the building industry offers a s...
Building Simulation and Optimization 2020, Virtual Conference, 21-22 September 2020Identifying physi...
The building sector globally accounts for more than one third of the nal energy consumption. In indu...
Decisions on how to best operate large complex plants such as natural gas processing, oil refineries...
Model-based Predictive Control (MPC) is an effective solution to improve building controls. It consi...
Model-based Predictive Control (MPC) is an effective solution to improve building controls. It consi...
The implementation of model predictive controls (MPCs) in buildings represents an important opportun...
The implementation of model predictive controls (MPCs) in buildings represents an important opportun...
Thermally Activated Building Systems (TABS) are difficult to control due to the time lag between the...
The implementation of model predictive controls (MPCs) in buildings represents an important opportun...
This paper presents an investigation of how Model Predictive Control (MPC) and weather predictions c...
The implementation of model predictive controls (MPCs) in buildings represents an important opportun...
Despite the increasing capabilities of information technologies for data acquisition and processing,...
International audienceIn energy-efficient buildings, the interactions and coupling effects between t...
Data has the potential to transform our environments for the better if utilized to its full potentia...
International audienceAs the most energy-intensive economic sector, the building industry offers a s...
Building Simulation and Optimization 2020, Virtual Conference, 21-22 September 2020Identifying physi...