IMECH-IR  > 非线性力学国家重点实验室
Data-driven learning algorithm to predict full-field aerodynamics of large structures subject to crosswinds
Chen XJ(陈贤佳); Yin B(银波); Yuan Z(袁征); Yang GW(杨国伟); Li, Qiang; Sun, Shouguang; Wei YJ(魏宇杰)
Source PublicationPHYSICS OF FLUIDS
2024-05-01
Volume36Issue:5Pages:19
ISSN1070-6631
Abstract

Quick and high-fidelity updates about aerodynamic loads of large-scale structures, from trains, planes, and automobiles to many civil infrastructures, serving under the influence of a broad range of crosswinds are of practical significance for their design and in-use safety assessment. Herein, we demonstrate that data-driven machine learning (ML) modeling, in combination with conventional computational methods, can fulfill the goal of fast yet faithful aerodynamic prediction for moving objects subject to crosswinds. Taking a full-scale high-speed train, we illustrate that our data-driven model, trained with a small amount of data from simulations, can readily predict with high fidelity pressure and viscous stress distributions on the train surface in a wide span of operating speed and crosswind velocity. By exploring the dependence of aerodynamic coefficients on yaw angles from ML-based predictions, a rapid update of aerodynamic forces is realized, which can be effectively generalized to trains operating at higher speed levels and subject to harsher crosswinds. The method introduced here paves the way for high-fidelity yet efficient predictions to capture the aerodynamics of engineering structures and facilitates their safety assessment with enormous economic and social significance.

DOI10.1063/5.0197178
Indexed BySCI ; EI
Language英语
WOS IDWOS:001225917600021
WOS KeywordHIGH-SPEED TRAIN ; DYNAMIC-RESPONSE ; PERFORMANCE ; WIND ; TOWER ; LOADS ; CFD
WOS Research AreaMechanics ; Physics
WOS SubjectMechanics ; Physics, Fluids & Plasmas
Classification一类/力学重要期刊
Ranking1
ContributorWei, Yujie
Citation statistics
Document Type期刊论文
Identifierhttp://dspace.imech.ac.cn/handle/311007/95612
Collection非线性力学国家重点实验室
流固耦合系统力学重点实验室
Corresponding AuthorWei YJ(魏宇杰)
Recommended Citation
GB/T 7714
Chen XJ,Yin B,Yuan Z,et al. Data-driven learning algorithm to predict full-field aerodynamics of large structures subject to crosswinds[J]. PHYSICS OF FLUIDS,2024,36,5,:19.Rp_Au:Wei, Yujie
APA Chen XJ.,Yin B.,Yuan Z.,Yang GW.,Li, Qiang.,...&Wei YJ.(2024).Data-driven learning algorithm to predict full-field aerodynamics of large structures subject to crosswinds.PHYSICS OF FLUIDS,36(5),19.
MLA Chen XJ,et al."Data-driven learning algorithm to predict full-field aerodynamics of large structures subject to crosswinds".PHYSICS OF FLUIDS 36.5(2024):19.
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