Risk-averse design of tall buildings for uncertain wind conditions
Anoop Kodakkal, Brendan Keith, Ustim Khristenko, Andreas Apostolatos,, Kai-Uwe Bletzinger, Barbara Wohlmuth, Roland Wuechner

TL;DR
This paper introduces a risk-averse shape optimization method for tall buildings that accounts for site-specific wind uncertainties, reducing structural costs and environmental impact while enhancing safety.
Contribution
It presents a novel risk-averse optimization framework incorporating stochastic wind uncertainties and adaptive sampling for computational efficiency in tall building design.
Findings
Risk-averse design outperforms risk-neutral in safety and cost.
Adaptive sampling accelerates stochastic optimization.
Optimized shapes reduce bending moments and carbon footprint.
Abstract
Reducing the intensity of wind excitation via aerodynamic shape modification is a major strategy to mitigate the reaction forces on supertall buildings, reduce construction and maintenance costs, and improve the comfort of future occupants. To this end, computational fluid dynamics (CFD) combined with state-of-the-art stochastic optimization algorithms is more promising than the trial and error approach adopted by the industry. The present study proposes and investigates a novel approach to risk-averse shape optimization of tall building structures that incorporates site-specific uncertainties in the wind velocity, terrain conditions, and wind flow direction. A body-fitted finite element approximation is used for the CFD with different wind directions incorporated by re-meshing the fluid domain. The bending moment at the base of the building is minimized, resulting in a building with…
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