Indirect structural health monitoring of a simplified laboratory-scale bridge model

Cerda, Fernando; Chen, Siheng; Bielak, Jacobo; Garrett, James H.; Rizzo, Piervincenzo; Kovacevic, Jelena

Abstract

An indirect approach is explored for structural health bridge monitoring allowing for wide, yet cost-effective, bridge stock coverage. The detection capability of the approach is tested in a laboratory setting for three different reversible proxy types of damage scenarios: changes in the support conditions (rotational restraint), additional damping, and an added mass at the midspan. A set of frequency features is used in conjunction with a support vector machine classifier on data measured from a passing vehicle at the wheel and suspension levels, and directly from the bridge structure for comparison. For each type of damage, four levels of severity were explored. The results show that for each damage type, the classification accuracy based on data measured from the passing vehicle is, on average, as good as or better than the classification accuracy based on data measured from the bridge. Classification accuracy showed a steady trend for low (1-1.75 m/s) and high vehicle speeds (2-2.75 m/s), with a decrease of about 7% for the latter. These results show promise towards a highly mobile structural health bridge monitoring system for wide and cost-effective bridge stock coverage.

Más información

Título según WOS: Indirect structural health monitoring of a simplified laboratory-scale bridge model
Título de la Revista: SMART STRUCTURES AND SYSTEMS
Volumen: 13
Número: 5
Editorial: TECHNO-PRESS
Fecha de publicación: 2014
Página de inicio: 849
Página final: 868
Idioma: English
URL: http://koreascience.or.kr/journal/view.jsp?kj=KJKHFZ&py=2014&vnc=v13n5&sp=849
Notas: ISI