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논문 기본 정보

자료유형
학술저널
저자정보
Tanaka, Hideyuki (Takenaka Corporation) Matsuoka, Yasutomo (Takenaka Corporation) Kawakami, Takuma (Takenaka Corporation) Azegami, Yasuhiko (Takenaka Corporation) Yamamoto, Masashi (Takenaka Corporation) Ohtake, Kazuo (Takenaka Corporation) Sone, Takayuki (Takenaka Corporation)
저널정보
한국초고층도시건축학회 International journal of high-rise buildings International journal of high-rise buildings 제8권 제4호
발행연도
2019.1
수록면
291 - 302 (12page)

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We performed calculations combining optimization technologies and Computational Fluid Dynamics (CFD) aimed at reducing wind forces and mitigating wind environments (local strong winds) around buildings. However, the Reynolds Averaged Navier-stokes Simulation (RANS), which seems somewhat inaccurate, needs to be used to create a realistic CFD optimization tool. Therefore, in this study we explored the possibilities of optimizing calculations using RANS. We were able to demonstrate that building configurations advantageous to wind forces could be predicted even with RANS. We also demonstrated that building layouts was more effective than building configurations in mitigating local strong winds around tall buildings. Additionally, we used the Convolutional Neural Network (CNN) as an airflow prediction method alternative to CFD in order to increase the speed of optimization calculations, and validated its prediction accuracy.

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