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Formwork System Selection Model for Tall Building Construction Using the Adaboost Algorithm

  • Shin, Yoon-Seok (Department of Architectural Engineering, Gyeongnam National University of Science and Technology)
  • Received : 2011.08.26
  • Accepted : 2011.09.02
  • Published : 2011.10.20

Abstract

In a tall building construction with reinforced concrete structures, the selection of an appropriate formwork system is a crucial factor for the success of the project. Thus, selecting an appropriate formwork system affects the entire construction duration and cost, as well as subsequent construction activities. However, in practice, the selection of an appropriate formwork system has depended mainly on the intuitive and subjective opinion of working level employees with restricted experience. Therefore, in this study, a formwork system selection model using the Adaboost algorithm is proposed to support the selection of a formwork system that is suitable for the construction site conditions. To validate the applicability of the proposed model, the selection models Adaboost and ANN were both applied to actual case data of tall building construction in Korea. The Adaboost model showed slightly better accuracy than that of the ANN model. The Adaboost model can assist engineers to determine the appropriate formwork system at the inception of future projects.

Keywords

References

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