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논문 기본 정보

자료유형
학술저널
저자정보
Gerasimidis, Simos (University of Massachusetts) Pantidis, Panos (University of Massachusetts) Knickle, Brendan (University of Massachusetts) Moon, Kyoung Sun (School of Architecture, Yale University)
저널정보
한국초고층도시건축학회 International journal of high-rise buildings International journal of high-rise buildings 제5권 제4호
발행연도
2016.1
수록면
319 - 326 (8page)

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The ingenuity of structural engineers in the field of tall and super-tall buildings has led to some of the most remarkable inventions. During this evolution of structural engineering concepts in the last 100 years, the technical challenges that engineers encountered were extraordinary and the advances were unprecedented. However, as the accomplishments of structural engineers are progressing, the desire for taller and safer structures is also increasing. The diagrid structural system is part of this evolving process as it develops a new paradigm for tall building design combining engineering efficiency and new architectural expression. The first appearances of this type of tall buildings have already been constructed and the interest of both engineering and architectural communities is growing mainly due to the many advantages compared to other structural systems. This paper presents a simple approach on optimizing member sizes for the diagonals of steel diagrid tall buildings. The optimizing method is based on minimizing the volume of the diagonal elements of a diagrid structure. The constraints are coming from the stiffness-based design, limiting the tip deflection of the building to widely accepted regulative limits. In addition, the current paper attempts to open the discussion on the important topic of optimization and robustness for tall buildings and also studies the future of the diagrid structural system.

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