A moving-window Bayesian inference procedure jointly estimates thermal parameters, airflow, occupancy trajectories, and sensor noise in a coupled CO2-temperature RC network model for buildings, achieving accurate trajectory reconstruction and low forecast errors on synthetic and physical validation.
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Data-driven moving-window Bayesian inference for transient CO2-temperature network models of buildings
A moving-window Bayesian inference procedure jointly estimates thermal parameters, airflow, occupancy trajectories, and sensor noise in a coupled CO2-temperature RC network model for buildings, achieving accurate trajectory reconstruction and low forecast errors on synthetic and physical validation.