Automation of geometric parameters control for reinforced concrete structures in building information modeling environment
https://doi.org/10.37538/0005-9889-2026-1(632)-42-49
EDN: RQMXTV
Abstract
Introduction. In current practice of reinforced concrete structures erection, traditional measurement control using manual tools followed by drafting schemes in CAD systems remains the most labor-intensive stage of technical supervision. The discreteness of such measurements and the lack of a direct link to the project digital environment complicate the rapid verification of completed work. The introduction of Building Information Modeling (BIM) technologies opens up opportunities for creating fundamentally new quality control mechanisms based on continuous reality scanning.
Aim. Substantiation of technological efficiency and development of a methodology for automated comparison of field measurement data (point clouds) with project BIM models to increase the speed of executive documentation formation.
Materials and methods. The study is based on the use of terrestrial laser scanning (TLS) as a tool for capturing the actual geometry of monolithic columns (a project in Kaliningrad). Data processing was carried out in the Revit environment. To compare “As-Built vs As-Designed” states, the method of aligning the point cloud and the information model using shared base coordinates was used. Mathematical estimation of the accuracy of the obtained point array relative to control measurements was carried out using the distance root mean squared (DRMS) indicator.
Results. The fundamental possibility of full automation of the process of identifying reinforced concrete structures geometric deviations in the BIM environment is proved. It has been established that automated comparison of the actual point cloud with project elements allows for the formation of executive schemes significantly faster than with the traditional approach. A comparative analysis showed a multiple reduction in labor costs for cameral data processing. It is noted that the direct transfer of deviation data to calculation complexes (LIRA-CAD allows for rapid verification calculations of the bearing capacity of elements whose parameters have exceeded the standard tolerances, which is technically unfeasible within traditional drafting in AutoCAD.
Conclusions. The use of BIM technologies in conjunction with laser scanning allows moving from selective manual inspection to systematic automated monitoring of reinforced concrete structures quality. This approach ensures acceptance transparency and updating of the building’s digital twin, minimizing time losses at the technical supervision stage.
About the Authors
E. V. SumarokovRussian Federation
Evgeny V. Sumarokov, Head of the Information Technology Department,
2nd Institutskaya str., 6, bld. 5, Moscow, 109428.
A. V. Obryadina
Russian Federation
Anastasia V. Obryadina, master,
2nd Krasnoarmeiskaya str., 4, St. Petersburg, 190005.
D. V. Kuzevanov
Russian Federation
Dmitry V. Kuzevanov, Cand. Sci. (Engineering), Director,
2nd Institutskaya str., 6, bld. 5, Moscow, 109428.
E. V. Volokhova
Russian Federation
Elizabeth V. Volokhova, Deputy Head of the Information Technology Department,
2nd Institutskaya str., 6, bld. 5, Moscow, 109428.
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Review
For citations:
Sumarokov E.V., Obryadina A.V., Kuzevanov D.V., Volokhova E.V. Automation of geometric parameters control for reinforced concrete structures in building information modeling environment. Concrete and Reinforced Concrete. 2026;632(1):42-49. (In Russ.) https://doi.org/10.37538/0005-9889-2026-1(632)-42-49. EDN: RQMXTV
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