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dc.creatorŠarkić Glumac, Anina
dc.creatorJadhav, Onkar
dc.creatorDespotović, Vladimir
dc.creatorBlocken, Bert
dc.creatorBordas, Stephane PA
dc.date.accessioned2023-11-27T12:05:30Z
dc.date.available2023-11-27T12:05:30Z
dc.date.issued2023
dc.identifier.issn0360-1323
dc.identifier.urihttps://grafar.grf.bg.ac.rs/handle/123456789/3292
dc.description.abstractComputational fluid dynamics (CFD) represents an attractive tool for estimating wind pressures and wind loads on high-rise buildings. The CFD analyses can be conducted either by low-fidelity simulations (RANS) or by high-fidelity ones (LES). The low-fidelity model can efficiently estimate wind pressures over a large range of wind directions, but it generally lacks accuracy. On the other hand, the high-fidelity model generally exhibits satisfactory accuracy, yet, the high computational cost can limit the number of approaching wind angles that can be considered. In order to take advantage of the main benefits of these two CFD approaches, a multi-fidelity machine learning framework is investigated that aims to ensure the simulation accuracy while maintaining the computational efficiency. The study shows that the accurate prediction of distributions of mean and rms pressure over a high-rise building for the entire wind rose can be obtained by utilizing only 3 LES-related wind directions. The artificial neural network is shown to perform best among considered machine learning models. Moreover, hyperparameter optimization significantly improves the model predictions, increasing the 𝑅��2 value in the case of rms pressure by 60%. Dominant and ineffective features are determined that provide a route to solve a similar application more effectively.sr
dc.language.isoensr
dc.publisherElseviersr
dc.relation"Fonds National de la Recherche, Luxembourg" (FNR), CORE Junior project DATA4WIND - "Data-Driven Approach for Urban Wind Energy Harvesting", C19/SR/13639741sr
dc.rightsopenAccesssr
dc.rights.urihttps://creativecommons.org/licenses/by-nc-nd/4.0/
dc.sourceBuilding and Environmentsr
dc.subjectWind loadingsr
dc.subjectMachine learningsr
dc.subjectLESsr
dc.subjectRANSsr
dc.titleA multi-fidelity wind surface pressure assessment via machine learning: A high-rise building casesr
dc.typearticlesr
dc.rights.licenseBY-NC-NDsr
dc.citation.rankaM21~
dc.citation.volume234
dc.identifier.doi10.1016/j.buildenv.2023.110135
dc.identifier.fulltexthttp://grafar.grf.bg.ac.rs/bitstream/id/12388/ML4CFD.pdf
dc.type.versionpublishedVersionsr


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