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- Title
A synthetic building operation dataset.
- Authors
Li, Han; Wang, Zhe; Hong, Tianzhen
- Abstract
This paper presents a synthetic building operation dataset which includes HVAC, lighting, miscellaneous electric loads (MELs) system operating conditions, occupant counts, environmental parameters, end-use and whole-building energy consumptions at 10-minute intervals. The data is created with 1395 annual simulations using the U.S. DOE detailed medium-sized reference office building, and 30 years' historical weather data in three typical climates including Miami, San Francisco, and Chicago. Three energy efficiency levels of the building and systems are considered. Assumptions regarding occupant movements, occupants' diverse temperature preferences, lighting, and MELs are adopted to reflect realistic building operations. A semantic building metadata schema - BRICK, is used to store the building metadata. The dataset is saved in a 1.2 TB of compressed HDF5 file. This dataset can be used in various applications, including building energy and load shape benchmarking, energy model calibration, evaluation of occupant and weather variability and their influences on building performance, algorithm development and testing for thermal and energy load prediction, model predictive control, policy development for reinforcement learning based building controls. Measurement(s) energy consumption • power demand • humidity • air flow rate • Occupancy • water flow rate Technology Type(s) computational modeling technique Factor Type(s) temporal interval Sample Characteristic - Environment building Machine-accessible metadata file describing the reported data: https://doi.org/10.6084/m9.figshare.14682948
- Subjects
BUILDING operation management; ENERGY consumption; SYNTHETIC building materials; UNITED States. Dept. of Energy; BENCHMARKING (Management); REINFORCEMENT learning
- Publication
Scientific Data, 2021, Vol 8, Issue 1, p1
- ISSN
2052-4463
- Publication type
Article
- DOI
10.1038/s41597-021-00989-6