Numerical Studies on the Structural-health Evaluation of Subway Stations based on Statistical Pattern Recognition Techniques

패턴인식 기반 역사 구조건전성 평가기법 개발을 위한 수치해석 연구

  • 신정열 (한국철도기술연구원, 도시철도표준화연구단) ;
  • 안태기 (한국철도기술연구원, 도시철도표준화연구단) ;
  • 이창길 (성균관대학교 건설환경시스템공학과) ;
  • 박승희 (성균관대학교 사회환경시스템공학과)
  • Published : 2011.05.26

Abstract

The safety of station structures among railway infrastructures should be considered as a top priority because hundreds of thousands passengers a day take a subway. The station structures, which have been being operated since the 1970s, are especially vulnerable to the earthquake and long-term vibrations such as ambient train vibrations as well. This is why the structural-health monitoring system of station structures should be required. For these reason, Korean government has made an effort to develop the structural health-monitoring system of them, which can evaluate the health-state of station structures as well as can monitor the vulnerable structural members in real-time. Then, through the monitoring system, the vulnerable structural members could be retrofitted. For the development of health-state evaluation method for station structures with the real-time sensing data measured in the fields, authors carried out the numerical simulations to develop evaluation algorithms based on statistical pattern recognition techniques. In this study, the dynamic behavior of Chungmuro station in Seoul was numerically analyzed and then critical members were chosen. Damages were artificially simulated at the selected critical members of the numerical model. And, the supervised and unsupervised learning based pattern recognition algorithms were applied to quantify and localize the structural defects.

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