Comparison of behavioral systems theory and conventional linear models for predicting building zone temperature in long-term in situ measurements
Manuel Koch, Colin N. Jones

TL;DR
This study compares behavioral systems theory and conventional linear models for predicting building zone temperature using long-term in situ data, highlighting their relative accuracy, computational efficiency, and data requirements.
Contribution
It provides a comprehensive comparison of adaptive behavioral systems models and ARX models in real building environments without artificial excitation.
Findings
All methods achieve sufficient prediction accuracy.
ARX models perform slightly better and are computationally simpler.
Using recent data improves model performance.
Abstract
The potential of Model Predictive Control in buildings has been shown many times, being successfully used to achieve various goals, such as minimizing energy consumption or maximizing thermal comfort. However, mass deployment has thus far failed, in part because of the high engineering cost of obtaining and maintaining a sufficiently accurate model. This can be addressed by using adaptive data-driven approaches. The idea of using behavioral systems theory for this purpose has recently found traction in the academic community. In this study, we compare variations thereof with different amounts of data used, different regularization weights, and different methods of data selection. Autoregressive models with exogenous inputs (ARX) are used as a well-established reference. All methods are evaluated by performing iterative system identification on two long-term data sets from real occupied…
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Taxonomy
TopicsBuilding Energy and Comfort Optimization · Advanced Control Systems Optimization
