Nonlinear Aeroelastic Prediction in Transonic Buffeting Flow by Deep Neural Network

Zihao Dou, Chuanqiang Gao, Weiwei Zhang, Yang Tao

Research output: Contribution to journalArticlepeer-review

16 Scopus citations

Abstract

Transonic buffet is an aerodynamic phenomenon of self-sustained shock oscillations. The aeroelastic problemcaused by it is very complex, includingtwodifferent dynamicmodes: forcedvibrationandfrequency lock-in.The vibrationof the structure has a negative influence on the fatigue life of the aircraft. Especially in the region of frequency lock-in, the limit cycle oscillations occur due to the instability of the structuralmode. Researchers have accurately predicted the region of frequency lock-in in transonic buffet and have clarified its mechanism by using a linear aerodynamic model. However, the nonlinear aeroelastic modeling and prediction of the transonic buffet remain to be solved. The long short-term memory (LSTM) deepneuralnetworkis suitable for predictingthe time-delayedeffects ofunsteady aerodynamics.Andit has achieved remarkable results in sequential datamodeling. In the presentwork, a nonlinearmodel is developed for the aeroelastic systemwithNACA0012 airfoil in transonic buffeting flow and validated with the coupled computational fluid dynamics/computational structural dynamics (CFD/CSD) simulation. First, the data set and the loss function are specially designed. Then, the reduced-order model (ROM) based on the LSTM of the flow is built by using unsteady Reynolds-averagedNavier-Stokes computations data in a post-buffet state. By coupling theROMand the single degreeof- freedomequation for the pitching angle, the nonlinear aeroelasticmodel is finally produced. The results showthat the phenomenon of frequency lock-in and the self-sustained buffeting aerodynamics are precisely reconstructed. And the model has a strong generalization ability and can reproduce complex vibrations caused by competition between different modes. In short, themodel can replace the CFD/CSD method in the current case with high efficiency and accuracy. The method can be used for modeling and prediction of other various complex aeroelastic systems.

Original languageEnglish
Pages (from-to)2412-2429
Number of pages18
JournalAIAA Journal
Volume61
Issue number6
DOIs
StatePublished - May 2023

Fingerprint

Dive into the research topics of 'Nonlinear Aeroelastic Prediction in Transonic Buffeting Flow by Deep Neural Network'. Together they form a unique fingerprint.

Cite this