Bibliographic Details
| Title: |
Bridging Information from Manufacturing to the AEC Domain: The Development of a Conversion Framework from STEP to IFC. |
| Authors: |
Avogaro, Davide, Zanchetta, Carlo |
| Source: |
Systems; Jun2025, Vol. 13 Issue 6, p421, 21p |
| Subject Terms: |
BUILDING information modeling, COMPUTER software development, CONCEPTUAL models, BONSAI |
| Abstract: |
Interoperability between digital models in the manufacturing and AEC domains is a critical issue in the building design of complex systems. Despite the adoption of well-established standards such as STEP (STandard for the Exchange of Product data, ISO 10303-21) for the industrial domain and IFC (Industry Foundation Classes, ISO 16739-1) for the construction domain, communication between these domains is still limited due to differences in conceptual models, levels of detail, and application purposes. Existing solutions for conversion between these formats are few, often proprietary, and not always suitable to ensure full semantic integration in BIM (Building Information Modeling) flows. This study proposes a methodological framework for structured conversion from STEP to IFC-SPF (STEP Physical File), based on information and geometric simplification and data enrichment. The process includes the elimination of irrelevant components, simplification of geometries, merging assemblies, and integration of data useful to the building context. The experimental implementation, carried out using the Bonsai extension for Blender, demonstrates a substantial reduction in geometric complexity and computational load, while maintaining data consistency required for integration into BIM processes. This approach emerges as a scalable, affordable, and sustainable solution for interoperability between industrial and civil models, even in professional environments lacking advanced software development skills. [ABSTRACT FROM AUTHOR] |
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| Database: |
Complementary Index |