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Digital Twin-Driven Pavement Health Monitoring and Maintenance Optimization Using Graph Neural Networks

Published: November 4, 2025 | arXiv ID: 2511.02957v1

By: Mohsin Mahmud Topu , Mahfuz Ahmed Anik , Azmine Toushik Wasi and more

Potential Business Impact:

Predicts road problems before they happen.

Business Areas:
Smart Cities Real Estate

Pavement infrastructure monitoring is challenged by complex spatial dependencies, changing environmental conditions, and non-linear deterioration across road networks. Traditional Pavement Management Systems (PMS) remain largely reactive, lacking real-time intelligence for failure prevention and optimal maintenance planning. To address this, we propose a unified Digital Twin (DT) and Graph Neural Network (GNN) framework for scalable, data-driven pavement health monitoring and predictive maintenance. Pavement segments and spatial relations are modeled as graph nodes and edges, while real-time UAV, sensor, and LiDAR data stream into the DT. The inductive GNN learns deterioration patterns from graph-structured inputs to forecast distress and enable proactive interventions. Trained on a real-world-inspired dataset with segment attributes and dynamic connectivity, our model achieves an R2 of 0.3798, outperforming baseline regressors and effectively capturing non-linear degradation. We also develop an interactive dashboard and reinforcement learning module for simulation, visualization, and adaptive maintenance planning. This DT-GNN integration enhances forecasting precision and establishes a closed feedback loop for continuous improvement, positioning the approach as a foundation for proactive, intelligent, and sustainable pavement management, with future extensions toward real-world deployment, multi-agent coordination, and smart-city integration.

Country of Origin
🇧🇩 Bangladesh

Page Count
45 pages

Category
Computer Science:
Machine Learning (CS)