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Enhancing Bridge Structural Health Monitoring Through Acoustic Sensing: A Comprehensive Approach to Traffic Analysis and Incident Detection

 Enhancing Bridge Structural Health Monitoring Through Acoustic Sensing: A Comprehensive Approach to Traffic Analysis and Incident Detection
Author(s): , , ,
Presented at IABSE Congress: Beyond Structural Engineering in a Changing World, San José, Cost Rica, 25-27 Seotember 2024, published in , pp. 1460-1467
DOI: 10.2749/sanjose.2024.1460
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This paper introduces a pioneering approach to bridge structural health monitoring through the development of a unified microphone assembly. This system enhances the detection and localization of v...
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Bibliographic Details

Author(s): (Shanghai Qi Zhi Institute, Shanghai, China Tongji University, Shanghai, China)
(Tongji University, Shanghai, China)
(Tongji University, Shanghai, China)
(Tongji University, Shanghai, China)
Medium: conference paper
Language(s): English
Conference: IABSE Congress: Beyond Structural Engineering in a Changing World, San José, Cost Rica, 25-27 Seotember 2024
Published in:
Page(s): 1460-1467 Total no. of pages: 8
Page(s): 1460-1467
Total no. of pages: 8
DOI: 10.2749/sanjose.2024.1460
Abstract:

This paper introduces a pioneering approach to bridge structural health monitoring through the development of a unified microphone assembly. This system enhances the detection and localization of vehicles on bridges by utilizing generalized cross-correlation and Time Difference of Arrival (TDOA) analysis. A novel combination of audio features is processed using Convolutional Neural Networks (CNN) and Vision Transformers (ViT) to classify vehicle types while detecting critical incidents like crashes and skidding. The proposed integrated system processes the Acoustic Emissions into a comprehensive database that records each vehicle's timestamp, lane occupancy, movement direction, vehicle type, and detected incidents. The effectiveness of this system not only demonstrates its potential to improve bridge safety but also sets a new benchmark for applying acoustic technologies in structural health monitoring.

Keywords:
structural health monitoring deep learning Acoustic Sensing Traffic Monitoring Incident Detection