横流转捩模型参数不确定度量化分析与应用研究

Translated title of the contribution: Uncertainty Quantification Analysis and Application Research on Cross-Flow Transition Model Parameters

Xing Hao Xiang, Yi Feng Zhang, Jian Qiang Chen, Xian Xu Yuan, Shu Sheng Chen

Research output: Contribution to journalArticlepeer-review

9 Scopus citations

Abstract

In order to obtain more accurate and reliable cross-flow transition prediction results and to evaluate the influence of model parameters on transition prediction, the parameter uncertainty analysis and parameter sensitivity analysis of the cross-flow transition model are carried out. Firstly, a fully localized cross-flow transition model based on the γ-Reθt transition model is implemented. Then, the numerical calculation of the S-K flat plate and the swept-wing example is carried out with the cross-flow transition model using the Latin hypercube sampling method for the model parameters. The non-intrusive polynomial chaos (NIPC) expansion method is used to quantitatively analyze the influence of the model parameters on different types of transition. Finally, based on the uncertainty and parameter sensitivity analysis results, the model parameters are filtrated and calibrated. The NLF(2)-0415 swept-wing, 6: 1 standard spheroid and DLR-F4 wing body combination are calculated. The results show that the model parameter cross-flow & surface roughness has the greatest influence on the transition position and surface friction coefficient. In several conditions, the model has a good prediction of the cross-flow transition in 3-D boundary layer.

Translated title of the contributionUncertainty Quantification Analysis and Application Research on Cross-Flow Transition Model Parameters
Original languageChinese (Traditional)
Pages (from-to)1141-1150
Number of pages10
JournalYuhang Xuebao/Journal of Astronautics
Volume41
Issue number9
DOIs
StatePublished - 30 Sep 2020

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