BS2025 / Program / Modelling the error structure in Urban Building Energy Models with a Gaussian Process-based approach

Modelling the error structure in Urban Building Energy Models with a Gaussian Process-based approach

Location
Room 8
Time
August 26, 11:15 am-11:30 am

Urban Building Energy Models (UBEM) support urban-scale energy decisions and have recently been applied to use cases requiring dynamic outputs like grid management. However, their predictive capability remains insufficiently addressed, limiting confidence in UBEM application when validation experiments (VE) are unavailable. This study proposes a Gaussian Process (GP)-based method to model the error structure of UBEM, involving: (1) creating a training dataset mapping VE conditions to validation errors, (2) fitting a GP model, and (3) using cross-validation to assess prediction accuracy and uncertainty while extrapolating to unknown scenarios.

Applied to the Blagnac (France) district heating network with the UBEM DIMOSIM, GP models effectively capture the inherent structure of UBEM error and uncertainties. Results reveal relationships between model performance and application conditions (e.g., load variation and weather), and show great potential in estimating within-domain model error and extrapolating beyond the validation domain.

Presenters

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