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Traffic and weather driven hybrid digital twin for bridge monitoring

arXiv cs.AI / 3/17/2026

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Key Points

  • A hybrid digital twin framework for bridge condition monitoring uses existing traffic cameras and weather APIs to reduce reliance on dedicated sensor installations.
  • The system fuses three near-real-time streams: YOLOv8 for vehicle counts and load proxies, an LWR model for density and deceleration-driven fatigue, and weather data for deterioration drivers such as temperature cycling, freeze-thaw activity, precipitation-related corrosion potential, and wind effects.
  • Monte Carlo simulations quantify uncertainty across traffic-environment scenarios, while Random Forest models map fused features to fatigue indicators and maintenance classifications.
  • Demonstrated on the Peace Bridge under high traffic and harsh winter conditions, illustrating a cost-effective approach to predictive maintenance for aging, high-traffic infrastructure.

Abstract

A hybrid digital twin framework is presented for bridge condition monitoring using existing traffic cameras and weather APIs, reducing reliance on dedicated sensor installations. The approach is demonstrated on the Peace Bridge (99 years in service) under high traffic demand and harsh winter exposure. The framework fuses three near-real-time streams: YOLOv8 computer vision from a bridge-deck camera estimates vehicle counts, traffic density, and load proxies; a Lighthill--Whitham--Richards (LWR) model propagates density \rho(x,t) and detects deceleration-driven shockwaves linked to repetitive loading and fatigue accumulation; and weather APIs provide deterioration drivers including temperature cycling, freeze-thaw activity, precipitation-related corrosion potential, and wind effects. Monte Carlo simulation quantifies uncertainty across traffic-environment scenarios, while Random Forest models map fused features to fatigue indicators and maintenance classification. The framework demonstrates utilizing existing infrastructure for cost-effective predictive maintenance of aging, high-traffic bridges in harsh climates.