Automated model generation and parameter estimation of building energy models using an ontology-based framework

Date Published
02/2025
Publication Type
Journal Article
Authors
DOI
10.1016/j.enbuild.2024.115228
Abstract

This study presents a methodology for automated model generation and parameter estimation of building energy models using semantic modeling and Bayesian estimation. Semantic modeling techniques are used to represent the system components and their interactions, facilitating the automatic generation of a simulation model from dynamic component models. The proposed approach is applied to a case study of a ventilation system where asimulation model is generated, calibrated, and assessed through different performance metrics. These metrics demonstrate the accuracy and reliability of both model point estimates and probabilistic prediction intervals across all model outputs. Overall, the proposed methodology offers a systematic and automated approach to model development and calibration in building energy systems, with potential applications in building performance analysis, monitoring, and optimization.

Journal
Energy and Buildings
Volume
329
Year of Publication
2025
Pagination
115228
Publisher
Elsevier BV
ISSN Number
0378-7788
URL
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Research Areas
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