Structural Damage Assessment Using the Probability Distribution Model of Damage Patterns

손상패턴의 확률밀도함수에 따른 구조물 손상추정

  • 조효남 (한양대학교 공학대학교) ;
  • 이성칠 (한양대학교 토목ㆍ환경공학) ;
  • 오달수 (한양대학교 토목ㆍ환경공학) ;
  • 최윤석 (한양대학교 토목ㆍ환경공학과)
  • Published : 2003.04.01

Abstract

The major problems with the conventional neural network, especially Back Propagation Neural Network, arise from the necessity of many training data for neural network learning and ambiguity in the relation of neural network structure to the convergence of solution. In this paper, the PNN is used as a pattern classifier to detect the damage of structure to avoid those drawbacks of the conventional neural network. In the PNN-based pattern classification problems, the probability density function for patterns is usually assumed by Gaussian distribution. But, in this paper, several probability density functions are investigated in order to select the most approriate one for structural damage assessment.

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