Self-Sensing Rubber for Bridge Bearing Monitoring

Author:

Orfeo Alessandra1ORCID,Tubaldi Enrico1ORCID,McAlorum Jack1ORCID,Perry Marcus1ORCID,Ahmadi Hamid2,McDonald Hazel3

Affiliation:

1. Department of Civil and Environmental Engineering, University of Strathclyde; Glasgow G1 1XQ, UK

2. Tun Abdul Razak Research Centre-TARRC, Hertford SG13 8NL, UK

3. Transport Scotland, Glasgow G4 0HF, UK

Abstract

Elastomeric bearings are widely used in bridges to support the superstructure, to transfer loads to substructures, and to accommodate movements induced by, for example, temperature changes. Bearing mechanical properties affect the bridge’s performance and its response to permanent and variable loadings (e.g., traffic). This paper describes the research carried out at Strathclyde towards the development of smart elastomeric bearings that can be used as a low−cost sensing technology for bridge and/or weigh−in−motion monitoring. An experimental campaign was performed, under laboratory conditions, on various natural rubber (NR) specimens enhanced with different conductive fillers. Each specimen was characterized under loading conditions that replicated in−situ bearings to determine their mechanical and piezoresistive properties. Relatively simple models can be used to describe the relationship between rubber bearing resistivity and deformation changes. Gauge factors (GFs) in the range between 2 and 11 are obtained, depending on the compound and the applied loading. Experiments were also carried out to show that the developed model can be used to predict the state of deformation of the bearings under random loadings of different amplitudes that are characteristic of the passage of traffic over a bridge.

Funder

Transport Scotland to Amey Consulting

University of Strathclyde

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

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