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Real-World Implementation of Offline Model-Free Reinforcement Learning for Thermostat Control

 
dc.contributor.authorGhane, Sara
dc.contributor.authorElmaz, Furkan
dc.contributor.authorJacobs, Stef
dc.contributor.authorHuybrechts, Thomas
dc.contributor.authorVerhaert, Ivan
dc.contributor.authorMercelis, Siegfried
dc.contributor.authorMannens, Erik
dc.contributor.imecauthorGhane, Sara
dc.contributor.imecauthorElmaz, Furkan
dc.contributor.imecauthorHuybrechts, Thomas
dc.contributor.imecauthorMercelis, Siegfried
dc.contributor.imecauthorMannens, Erik
dc.contributor.orcidimecGhane, Sara::0000-0002-0159-175X
dc.contributor.orcidimecElmaz, Furkan::0000-0002-7030-0784
dc.contributor.orcidimecHuybrechts, Thomas::0000-0002-5611-6331
dc.contributor.orcidimecMercelis, Siegfried::0000-0001-9355-6566
dc.contributor.orcidimecMannens, Erik::0000-0001-7946-4884
dc.date.accessioned2025-07-27T03:57:16Z
dc.date.available2025-07-27T03:57:16Z
dc.date.issued2025
dc.description.abstractThis study introduces a model-free, offline Reinforcement Learning (RL) approach for optimizing the thermostat control in heating systems. Specifically, historical data from a real-world building was used to train the RL agent that is based on the Dueling Double Deep Q-Network (DQN) algorithm. The RL agent's objective is to balance thermal comfort with energy savings, by controlling indoor temperature set points. Traditional rule-based thermostat control methods often depend on fixed schedules and lack adaptability to varying conditions, resulting in energy inefficiencies. Training the RL model offline eliminates the requirement for live interaction, thereby preventing potential disruptions to occupant comfort. During evaluation, the RL model achieved an 18.66% reduction in energy use compared to a rule-based controller, while maintaining recommended indoor temperature levels.
dc.identifier.doi10.1109/ICM62621.2025.10934768
dc.identifier.eisbn979-8-3315-3389-2
dc.identifier.isbn979-8-3315-3390-8
dc.identifier.issn2837-1143
dc.identifier.urihttps://imec-publications.be/handle/20.500.12860/45935
dc.language.isoen
dc.publisherIEEE
dc.source.beginpage1
dc.source.conferenceInternational Conference on Mechatronics-ICOM
dc.source.conferencedate2025-02-28
dc.source.conferencelocationWollongong
dc.source.endpage6
dc.source.journal2025 IEEE International Conference on Mechatronics (ICM)
dc.source.numberofpages6
dc.title

Real-World Implementation of Offline Model-Free Reinforcement Learning for Thermostat Control

dc.typeProceedings paper
dspace.entity.typePublication
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