인공신경망을 이용한 온도프리스트레싱 공법의 적정 가열구간 설정에 관한 연구

Determination of Optimum Heating Regions for Thermal Prestressing Method Using Artificial Neural Network

  • 김상효 (연세대학교 사회환경시스템공학부) ;
  • 김준환 (연세대학교 토목공학) ;
  • 김강미 (연세대학교 토목공학과)
  • 발행 : 2003.04.01

초록

Thermal Prestressing Method for continuous composite girder bridges is a new design and construction method developed to induce initial composite stresses in the concrete slab at negative bending regions. Due to the induced initial stresses, prevention of tensile cracks at concrete slab, reduction of steel girder section, and reduction of reinforcing bars are possible. Thus, economical and construction efficiency can be improved. Method for determining optimum heating region of Thermal Prestressing Method, has not been established although such method is essential for increasing efficiency of the designing process. Trial-and-error method used in previous studies is far from efficient and more rational method for computing optimal heating region is required. In this study, efficient method for determining optimum heating region in the use of Thermal Prestressing Method is developed based on artificial neural network algorithm, which is widely adopted to pattern recognition, optimization, diagnosis, and estimation problems in various fields. Back-propagation algorithm, which is commonly used as a learning algorithm in neural network problems, is used for training of the neural network. Through case studies of 2-span continuous and 3-span continuous composite girder bridges using the developed process, the optimal heating regions are obtained.

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