In bridge assessment practices, the field remains strongly tied to traditional methods, with owner agencies relying heavily on accumulated heuristic knowledge to interpret data and make decisions based on standard inspections and load ratings. As a result, rapidly deployable technologies such as wireless, non-contact, or remote sensing are important for the future of structural health monitoring. Towards that end, the aim of this research was to explore the use of remote sensing, such as terrestrial laser scanners, to support and improve the assessment of bridge deck condition. Two terrestrial laser scanner (TLS) application scenarios are presented for the characterisation of longitudinal and transverse profiles that affect the performance of the deck against appropriate water runoff, hindering the condition of the deck due to the development of corrosion. These profiles are compared to electrical resistivity and rebar cover available from the ground penetrating radar data collected. The profile of the evaluated bridge decks was captured within the accuracy of the TLS (±1 mm over 10 m). TLS-derived point cloud data enable accurate geometric modelling of bridge decks, supporting condition assessment by identifying regions with reduced rebar cover and surface slopes associated with increased deterioration risk.
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Research Article|
January 14 2026
Bridge deck construction quality assurance/quality control and performance prediction incorporating point cloud data analysis Available to Purchase
Adriana Trias Blanco;
Department of Civil and Environmental Engineering,
Rowan University
, Glassboro, USA
Corresponding author Adriana Trias Blanco (trias@rowan.edu)
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Jie Gong;
Jie Gong
Department of Civil and Environmental Engineering,
Rutgers University
, Piscataway, USA
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Franklin Moon
Franklin Moon
Department of Civil and Environmental Engineering,
Rutgers University
, Piscataway, USA
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Corresponding author Adriana Trias Blanco (trias@rowan.edu)
Publisher: Emerald Publishing
Received:
November 05 2024
Accepted:
August 25 2025
Online ISSN: 1751-7664
Print ISSN: 1478-4637
© 2025 Emerald Publishing Limited
2025
Emerald Publishing Limited
Licensed re-use rights only
Proceedings of the Institution of Civil Engineers - Bridge Engineering 1–19.
Article history
Received:
November 05 2024
Accepted:
August 25 2025
Citation
Trias Blanco A, Gong J, Moon F (2026;), "Bridge deck construction quality assurance/quality control and performance prediction incorporating point cloud data analysis". Proceedings of the Institution of Civil Engineers - Bridge Engineering, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1680/jbren.24.00052
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