000022560 001__ 22560
000022560 005__ 20170724144655.0
000022560 04107 $$aeng
000022560 046__ $$k2017-07-04
000022560 100__ $$aDing, Fei
000022560 24500 $$aA multi-fidelity shape optimization via surrogate modeling for civil structures

000022560 24630 $$n7.$$p7th European and African Conference on Wind Engineering 
000022560 260__ $$bl'Association pour l'Ingénierie du Vent
000022560 506__ $$arestricted
000022560 520__ $$2eng$$aShape optimization serves as a powerful tool to reduce wind effects on buildings. Past studies have demonstrated the superiority of the shape tailoring technique in aerodynamic mitigation through recessing or chamfering building corners, etc. Nonetheless, conventional approaches highly rely on wind tunnel experiments for which only a limited number of candidate geometries are tested to identify the best-performing one. In an attempt to globally and automatically explore the optimal geometry, the shape optimization via surrogate modeling is introduced in this study. Particularly, computational fluid dynamics (CFD) is employed for calibration of the surrogate model. The CFD analyses can be conducted either through low-fidelity simulations such as Reynolds-averaged Navier-Stokes (RANS) model, or through high-fidelity ones including Large Eddy Simulation (LES) or Direct Numerical Simulation (DNS). The low-fidelity model can provide a large ensemble for surrogate calibration, yet it suffers from the lack of accuracy. On the other hand, the high-fidelity model exhibits satisfactory accuracy, while it can only accommodate a small ensemble which may result in a large sampling error in the surrogate calibration. In order to take advantages of the merits of two types of CFD models, a multi-fidelity surrogate modeling is investigated in this research to guarantee the model accuracy as well as maintaining the computational efficiency. A case study for the shape optimization of a tall building is used to illustrate the efficacy and efficiency of the proposed methodology.

000022560 540__ $$aText je chráněný podle autorského zákona č. 121/2000 Sb.
000022560 653__ $$aKeywords Shape Optimization, Surrogate Calibration, CFD Analyses, Multi-Fidelity Surrogate Modeling.

000022560 7112_ $$a7th European and African Conference on Wind Engineering$$cLiège, BE$$d2017-07-04 / 2017-07-07$$gEACWE2017
000022560 720__ $$aDing, Fei$$iSpence, Seymour$$iKareem, Ahsan
000022560 8560_ $$ffischerc@itam.cas.cz
000022560 8564_ $$s379425$$uhttps://invenio.itam.cas.cz/record/22560/files/93.pdf$$yOriginal version of the author's contribution in proceedings, id 93, section .
000022560 962__ $$r22493
000022560 980__ $$aPAPER