Multisensory and BIM-Integrated Digital Twin to Improve Urban Excavation Safety
Publication: Journal of Computing in Civil Engineering
Volume 37, Issue 5
Abstract
Urban excavation is an indispensable process for many construction activities such as road paving, house building, and pipe rehabilitation. However, the everincreasing complexity of underground utilities (e.g., water mains, gas lines, and sewage pipes) in urban environments challenges the safety of urban excavation, posing tremendous risks of potential collision and damage accidents. By obtaining real-time excavation information and high-fidelity simulation to evaluate safety risks, digital twin (DT) has an unexplored potential to improve urban excavation safety (UES). This research aims to investigate how a DT for urban excavation can be developed and used to improve UES. First, a multisensory solution is proposed to equip the physical excavators with the capability to precisely estimate their three-dimensional (3D) poses based on the kinematic model and social spider algorithm (SSA). Second, a building information model (BIM) of buried utilities and a 3D model of the excavators are integrated to form a dynamic virtual model that mirrors the actual excavation process. Third, based on the physical-virtual coupling DT, a real-time safety control method is proposed to proactively monitor urban excavation, dynamically assess collision risk, and timely warn against unsafe behaviors. A system prototype was developed and applied in a case study in Shandong, China. Results show that the system can precisely twin the pose of the excavator, increasing the estimation accuracy of the translation by at least 4.0 cm. The system can display the dynamic spatial position of the excavator and the buried pipes in 3D and automatically guide the excavator to operate safely in real-time, thereby avoiding potential collision accidents.
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Data Availability Statement
Some or all data, models, or code generated or used during the study are available from the corresponding author by request. It mainly includes the following data: (1) field data for pose estimation; and (2) code for algorithm optimization and pose estimation.
Acknowledgments
This research was supported by the National Natural Science Foundation of China (No. 52279136).
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© 2023 American Society of Civil Engineers.
History
Received: Jan 30, 2023
Accepted: May 5, 2023
Published online: Jul 4, 2023
Published in print: Sep 1, 2023
Discussion open until: Dec 4, 2023
ASCE Technical Topics:
- Architectural engineering
- Building information modeling
- Building management
- Buried pipes
- Business management
- Construction engineering
- Construction methods
- Dynamic models
- Engineering fundamentals
- Equipment and machinery
- Excavation
- Infrastructure
- Models (by type)
- Pipeline systems
- Pipes
- Practice and Profession
- Probe instruments
- Public administration
- Public health and safety
- Safety
- Three-dimensional models
- Urban and regional development
- Urban areas
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