A hybrid approach for uncertainty quantification in dynamic building energy systems modeling
Room 8
August 26, 2:30 pm-2:45 pm
Accurate estimation of building energy system performance is critical for its optimal design and operation. However, uncertainties in building energy modeling (BEM) can cause significant discrepancies between predictions and real-world performance. To address these issues, this paper proposes a hybrid modeling framework integrating EnergyPlus with Quantile Regression Random Forests (QRRF) method to predict the cooling load of radiant cooling panels.
The best variant achieved CV(RMSE) of 16.70% for 1-hour and 28.34% for 5-minute predictions, outperforming both physics-based and data-driven models. Moreover, by incorporating simulated indoor dynamics instead of relying on measurements, the hybrid model maintains coverage probability while more accurately estimating lower-tail loads. These findings underscore the effectiveness of uncertainty-aware hybrid modeling over a building’s life-cycle.
Presenters
Yiting Zhang
National University of Singapore