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Research and practice of health monitoring for long-span bridges in the mainland of China

  • Li, Hui (Key Lab of Structures Dynamic Behavior and Control (Harbin Institute of Technology), The Ministry of Education) ;
  • Ou, Jinping (Key Lab of Structures Dynamic Behavior and Control (Harbin Institute of Technology), The Ministry of Education) ;
  • Zhang, Xigang (CCCC Highway Consultants CO., Ltd.) ;
  • Pei, Minshan (CCCC Highway Consultants CO., Ltd.) ;
  • Li, Na (CCCC Highway Consultants CO., Ltd.)
  • Received : 2014.11.27
  • Accepted : 2015.01.25
  • Published : 2015.03.25

Abstract

The large number of long-span bridges constructed in China motivates the applications of structural health monitoring (SHM) technology. Many bridges have been equipped with sophisticated SHM systems in the mainland of China and in Hong Kong of China. Recently, SHM technology has been extended to field test systems. In this view, SHM can serve as a tool to develop the methods of life-cycle performance design, evaluation, maintenance and management of bridges; to develop new structural analysis methods through validation and feedback from SHM results; and to understand the behavior of bridges under natural and man-made disasters, rapidly assess the damage and loss of structures over large regions after disasters, e.g., earthquake, typhoon, flood, etc. It is hoped that combining analytical methods, numerical simulation, small-scale tests and accelerated durability tests with SHM could become the main engine driving the development of bridge engineering. This paper demonstrates the above viewpoint.

Keywords

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