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Using statistical analysis of an acceleration-based bridge weigh-in-motion system for damage detection

Authors :
Muhammad Arslan Khan
Eugene J. O'Brien
Daniel McCrum
Aleš Žnidarič
Source :
Applied Sciences, Vol 10, Iss 2, p 663 (2020), Applied Sciences, Volume 10, Issue 2
Publication Year :
2020
Publisher :
MDPI, 2020.

Abstract

This paper develops a novel method of bridge damage detection using statistical analysis of data from an acceleration-based bridge weigh-in-motion (BWIM) system. Bridge dynamic analysis using a vehicle-bridge interaction model is carried out to obtain bridge accelerations, and the BWIM concept is applied to infer the vehicle axle weights. A large volume of traffic data tends to remain consistent (e.g., most frequent gross vehicle weight (GVW) of 3-axle trucks)<br />therefore, the statistical properties of inferred vehicle weights are used to develop a bridge damage detection technique. Global change of bridge stiffness due to a change in the elastic modulus of concrete is used as a proxy of bridge damage. This approach has the advantage of overcoming the variability in acceleration signals due to the wide variety of source excitations/vehicles&mdash<br />data from a large number of different vehicles can be easily combined in the form of inferred vehicle weight. One year of experimental data from a short-span reinforced concrete bridge in Slovenia is used to assess the effectiveness of the new approach. Although the acceleration-based BWIM system is inaccurate for finding vehicle axle-weights, it is found to be effective in detecting damage using statistical analysis. It is shown through simulation as well as by experimental analysis that a significant change in the statistical properties of the inferred BWIM data results from changes in the bridge condition.

Details

Language :
English
Database :
OpenAIRE
Journal :
Applied Sciences, Vol 10, Iss 2, p 663 (2020), Applied Sciences, Volume 10, Issue 2
Accession number :
edsair.doi.dedup.....b5b9185255b7a3a9528a49680821d80b