Author
Listed:
- Jibiao Zhou
(Department of Security, Ningbo Highway Construction & Management Center, No. 396, Songjiang Mid. Rd., Ningbo 315211, China
College of Transportation Engineering, Tongji University, Shanghai 201804, China)
- Zewei Li
(Faculty of Maritime and Transportation, Ningbo University, No. 169, Qixing Rd., Ningbo 315832, China)
- Zhan Shi
(Department of Security, Ningbo Highway Construction & Management Center, No. 396, Songjiang Mid. Rd., Ningbo 315211, China)
- Xinhua Mao
(College of Transportation Engineering, Chang’an University, Xi’an 710064, China)
- Chao Gao
(College of Transportation Engineering, Chang’an University, Xi’an 710064, China)
Abstract
Highway construction remains one of the most hazardous sectors in the infrastructure domain, where persistent accident rates challenge the vision of sustainable and safe development. Traditional hazard identification methods rely on manual inspections that are often slow, error-prone, and unable to cope with complex and dynamic site conditions. To address these limitations, this study develops a cognitive-inspired multimodal learning framework integrated with BIM–GIS-enabled digital twins to advance intelligent hazard identification and digital management for highway construction safety. The framework introduces three key innovations: a biologically grounded attention mechanism that simulates inspector search behavior, an adaptive multimodal fusion strategy that integrates visual, textual, and sensor information, and a closed-loop digital twin platform that synchronizes physical and virtual environments in real time. The system was validated across five highway construction projects over an 18-month period. Results show that the framework achieved a hazard detection accuracy of 91.7% with an average response time of 147 ms. Compared with conventional computer vision methods, accuracy improved by 18.2%, while gains over commercial safety systems reached 24.8%. Field deployment demonstrated a 34% reduction in accidents and a 42% increase in inspection efficiency, delivering a positive return on investment within 8.7 months. By linking predictive safety analytics with BIM–GIS semantics and site telemetry, the framework enhances construction safety, reduces delays and rework, and supports more resource-efficient, low-disruption project delivery, highlighting its potential as a sustainable pathway toward zero-accident highway construction.
Suggested Citation
Jibiao Zhou & Zewei Li & Zhan Shi & Xinhua Mao & Chao Gao, 2025.
"Cognitive-Inspired Multimodal Learning Framework for Hazard Identification in Highway Construction with BIM–GIS Integration,"
Sustainability, MDPI, vol. 17(21), pages 1-28, October.
Handle:
RePEc:gam:jsusta:v:17:y:2025:i:21:p:9395-:d:1777392
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