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  5. SINERGYM - a virtual testbed for building energy optimization with Reinforcement Learning
 
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SINERGYM - a virtual testbed for building energy optimization with Reinforcement Learning
File(s)
manuscript_unmarked.pdf (10.97 MB)
Accepted version
Author(s)
Campoy-Nieves, Alejandro
Manjavacas, Antonio
Jimenez-Raboso, Javier
Molina-Solana, Miguel
Gomez-Romero, Juan
Type
Journal Article
Abstract
Simulation has become a crucial tool for Building Energy Optimization (BEO) as it enables the evaluation of different design and control strategies at a low cost. Machine Learning (ML) algorithms can leverage large-scale simulations to learn optimal control from vast amounts of data without supervision, particularly under the Reinforcement Learning (RL) paradigm. Unfortunately, the lack of open and standardized tools has hindered the widespread application of ML and RL to BEO. To address this issue, this paper presents Sinergym, an open-source Python-based virtual testbed for large-scale building simulation, data collection, continuous control, and experiment monitoring. Sinergym provides a consistent interface for training and running controllers, predefined benchmarks, experiment visualization and replication support, and comprehensive documentation in a ready-to-use software library. This paper 1) highlights the main features of Sinergym in comparison to other existing frameworks, 2) describes its basic usage, and 3) demonstrates its applicability for RL-based BEO through several representative examples. By integrating simulation, data, and control, Sinergym supports the development of intelligent, data-driven applications for more efficient and responsive building operations, aligning with the objectives of digital twin technology.
Date Issued
2025-01-15
Date Acceptance
2024-11-17
Citation
Energy and Buildings, 2025, 327
URI
https://hdl.handle.net/10044/1/126544
URL
https://www.sciencedirect.com/science/article/pii/S0378778824011915?via%3Dihub
DOI
10.1016/j.enbuild.2024.115075
ISSN
0378-7788
Publisher
Elsevier
Journal / Book Title
Energy and Buildings
Volume
327
Copyright Statement
Copyright © 2024 Elsevier B.V. This is the author’s accepted manuscript made available under a CC-BY licence in accordance with Imperial’s Research Publications Open Access policy (www.imperial.ac.uk/oa-policy)
License URL
https://creativecommons.org/licenses/by/4.0/
Subjects
Building Energy Optimization
Construction & Building Technology
Energy & Fuels
EnergyPlus
Engineering
Engineering, Civil
HVAC
Machine Learning
Reinforcement Learning
Science & Technology
Simulation
Technology
Publication Status
Published
Article Number
115075
Date Publish Online
2024-11-22
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