A 3D Parameterized BIM-Modeling Method for Complex Engineering Structures in Building Construction Projects.

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Název: A 3D Parameterized BIM-Modeling Method for Complex Engineering Structures in Building Construction Projects.
Autoři: Yang, Lijun, Gao, Xuexiang, Chen, Song, Li, Qianyao, Bai, Shuo
Zdroj: Buildings (2075-5309); Jun2024, Vol. 14 Issue 6, p1752, 16p
Témata: STRUCTURAL engineering, METHODS engineering, BUILDING design & construction, CONSTRUCTION projects, BATCH processing, PARAMETRIC modeling
Abstrakt: The structural components of large-scale public construction projects are more complex than those of ordinary residential buildings, with irregular and diverse components, as well as a large number of repetitive structural elements, which increase the difficulty of BIM-modeling operations. Additionally, there is a significant amount of inherent parameter information in the construction process, which puts forward higher requirements for the application and management capabilities of BIM technology. However, the current BIM software still has deficiencies in the parameterization of complex and irregular structural components, fine modeling, and project management information. To address these issues, this paper takes Grasshopper as the core parametric tool and Revit as the carrier of component attribute information. It investigates the parametric modeling logic of Grasshopper and combines the concepts of parameterization, modularization, standardization, and engineering practicality to create a series of parametric programs for complex structural components in building projects. This approach mainly addresses intricate challenges pertaining to the parametric structural shapes (including batch processing) and parametric structural attributes (including the batch processing of diverse attribute parameters), thereby ensuring the efficiency in BIM modeling throughout the design and construction phases of complex building projects. [ABSTRACT FROM AUTHOR]
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Databáze: Complementary Index
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