BEMTrace: Visualization-driven approach for deriving Building Energy Models from BIM
July 28, 2024 Β· Declared Dead Β· π IEEE Transactions on Visualization and Computer Graphics
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Authors
Andreas Walch, Attila Szabo, Harald Steinlechner, Thomas Ortner, Eduard GrΓΆller, Johanna Schmidt
arXiv ID
2407.19464
Category
cs.HC: Human-Computer Interaction
Citations
3
Venue
IEEE Transactions on Visualization and Computer Graphics
Last Checked
4 months ago
Abstract
Building Information Modeling (BIM) describes a central data pool covering the entire life cycle of a construction project. Similarly, Building Energy Modeling (BEM) describes the process of using a 3D representation of a building as a basis for thermal simulations to assess the building's energy performance. This paper explores the intersection of BIM and BEM, focusing on the challenges and methodologies in converting BIM data into BEM representations for energy performance analysis. BEMTrace integrates 3D data wrangling techniques with visualization methodologies to enhance the accuracy and traceability of the BIM-to-BEM conversion process. Through parsing, error detection, and algorithmic correction of BIM data, our methods generate valid BEM models suitable for energy simulation. Visualization techniques provide transparent insights into the conversion process, aiding error identification, validation, and user comprehension. We introduce context-adaptive selections to facilitate user interaction and to show that the BEMTrace workflow helps users understand complex 3D data wrangling processes.
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