TR2021-105
Data-driven calibration of physics-informed models of joint building/equipment dynamics using Bayesian optimization
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- "Data-driven calibration of physics-informed models of joint building/equipment dynamics using Bayesian optimization", Building Simulation Conference 2021, September 2021.BibTeX TR2021-105 PDF Video
- @inproceedings{Chakrabarty2021sep,
- author = {Chakrabarty, Ankush and Maddalena, Emilio and Qiao, Hongtao and Laughman, Christopher R.},
- title = {Data-driven calibration of physics-informed models of joint building/equipment dynamics using Bayesian optimization},
- booktitle = {Building Simulation Conference 2021},
- year = 2021,
- month = sep,
- url = {https://www.merl.com/publications/TR2021-105}
- }
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- "Data-driven calibration of physics-informed models of joint building/equipment dynamics using Bayesian optimization", Building Simulation Conference 2021, September 2021.
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MERL Contacts:
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Research Areas:
Abstract:
Physics-informed simulation models of heating, ventilation, and cooling (HVAC) systems play a critical role in predicting system dynamics and enabling analysis, control, and optimization of buildings and equipment. The predictive performance of these simulation models are strongly linked to calibration mechanisms: algorithms that systematically select parameter values that optimize a given calibration-cost map (e.g., L-2 error). Poorly selected parameter values typically result in large deviations between measured building data and simulated data, limiting the utility of the simulation model in subsequent design. State-of-the-art calibration methods explore the parameter space by computing numerical gradients that are susceptible to measurement noise or employing population-based search mechanisms that require exorbitant data. To improve robustness and curtail data requirements, one can ‘learn’ or approximate the calibration-cost map and subsequently leverage the topology of the approximated function to find good search directions despite noisy measurements. Concretely, we employ machine learning to construct a calibration-cost map to direct model calibration for systems with joint dynamics of buildings and HVAC equipment. The learner explores subregions of the parameter space with high uncertainty and queries the model only where collecting simulation data yields useful information. This leads to lower simulation data-requirements compared to widely used calibration mechanisms.
Related News & Events
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NEWS Ankush Chakrabarty gave an invited talk at CRAN: Centre de Recherche en Automatique de Nancy, France Date: October 21, 2021
Where: Université de Lorraine, France
MERL Contact: Ankush Chakrabarty
Research Areas: Artificial Intelligence, Control, Machine Learning, Multi-Physical Modeling, OptimizationBrief- Ankush Chakrabarty (RS, Multiphysical Systems Team) gave an invited talk on `Bayesian-Optimized Estimation and Control for Buildings and HVAC' at the Research Center for Automatic Control (CRAN) in the University of Lorraine in France. The talk presented recent MERL research on probabilistic machine learning for set-point optimization and calibration of digital twins for building energy systems.