A Priori Assessment of Prediction Confidence for Data-Driven Turbulence Modeling

被引:0
作者
Jin-Long Wu
Jian-Xun Wang
Heng Xiao
Julia Ling
机构
[1] Virginia Tech,Department of Aerospace and Ocean Engineering
[2] Sandia National Laboratories,Thermal/Fluid Science and Engineering
来源
Flow, Turbulence and Combustion | 2017年 / 99卷
关键词
Turbulence modeling; Mahalanobis distance; Kernel density estimation; Random forest regression; Extrapolation; Machine learning;
D O I
暂无
中图分类号
学科分类号
摘要
Although Reynolds-Averaged Navier–Stokes (RANS) equations are still the dominant tool for engineering design and analysis applications involving turbulent flows, standard RANS models are known to be unreliable in many flows of engineering relevance, including flows with separation, strong pressure gradients or mean flow curvature. With increasing amounts of 3-dimensional experimental data and high fidelity simulation data from Large Eddy Simulation (LES) and Direct Numerical Simulation (DNS), data-driven turbulence modeling has become a promising approach to increase the predictive capability of RANS simulations. However, the prediction performance of data-driven models inevitably depends on the choices of training flows. This work aims to identify a quantitative measure for a priori estimation of prediction confidence in data-driven turbulence modeling. This measure represents the distance in feature space between the training flows and the flow to be predicted. Specifically, the Mahalanobis distance and the kernel density estimation (KDE) technique are used as metrics to quantify the distance between flow data sets in feature space. To examine the relationship between these two extrapolation metrics and the machine learning model prediction performance, the flow over periodic hills at Re = 10595 is used as test set and seven flows with different configurations are individually used as training sets. The results show that the prediction error of the Reynolds stress anisotropy is positively correlated with Mahalanobis distance and KDE distance, demonstrating that both extrapolation metrics can be used to estimate the prediction confidence a priori. A quantitative comparison using correlation coefficients shows that the Mahalanobis distance is less accurate in estimating the prediction confidence than KDE distance. The extrapolation metrics introduced in this work and the corresponding analysis provide an approach to aid in the choice of data source and to assess the prediction performance for data-driven turbulence modeling.
引用
收藏
页码:25 / 46
页数:21
相关论文
共 50 条
  • [31] Compressive strength prediction of ultra lightweight cement using data-driven modeling techniques
    Hussain, Athar
    Addo-Yobo, Andrew
    Emadi, Hossein
    Qureshi, Sarah
    Abdelkerim, Omar
    Watson, Marshall
    Multiscale and Multidisciplinary Modeling, Experiments and Design, 2025, 8 (06)
  • [32] Data Consistency for Data-Driven Smart Energy Assessment
    Chicco, Gianfranco
    FRONTIERS IN BIG DATA, 2021, 4
  • [33] A data-driven method for modelling dissipation rates in stratified turbulence
    Lewin, Samuel F.
    Kops, Stephen M. de Bruyn
    Caulfield, Colm-cille P.
    Portwood, Gavin D.
    JOURNAL OF FLUID MECHANICS, 2023, 977
  • [34] Data-Driven Adverse Pressure Gradient Correction for Turbulence Model
    Shan, Xianglin
    Zhang, Weiwei
    AIAA JOURNAL, 2025,
  • [35] HairBrush for Immersive Data-Driven Hair Modeling
    Xing, Jun
    Nagano, Koki
    Chen, Weikai
    Xu, Haotian
    Wei, Li-Yi
    Zhao, Yajie
    Lu, Jingwan
    Kim, Byungmoon
    Li, Hao
    PROCEEDINGS OF THE 32ND ANNUAL ACM SYMPOSIUM ON USER INTERFACE SOFTWARE AND TECHNOLOGY (UIST 2019), 2019, : 263 - 279
  • [36] Data-driven predictive modeling of Hubble parameter
    Salti, Mehmet
    Ciger, Emel
    Kangal, Evrim Ersin
    Zengin, Bilgin
    PHYSICA SCRIPTA, 2022, 97 (08)
  • [37] Data-Driven Residential Building Energy Consumption Prediction for Supporting Multiscale Sustainability Assessment
    Wang, Lufan
    El-Gohary, Nora M.
    COMPUTING IN CIVIL ENGINEERING 2017: INFORMATION MODELLING AND DATA ANALYTICS, 2017, : 324 - 332
  • [38] Data-Driven Modeling of Appliance Energy Usage
    Assadian, Cameron Francis
    Assadian, Francis
    ENERGIES, 2023, 16 (22)
  • [39] Development and deployment of data-driven turbulence model for three-dimensional complex configurations
    Sun, Xuxiang
    Liu, Yilang
    Zhang, Weiwei
    Wang, Yongzhong
    Zou, Jingyuan
    Han, Zhengrong
    Su, Yun
    MACHINE LEARNING-SCIENCE AND TECHNOLOGY, 2024, 5 (03):
  • [40] Data-driven modeling and learning in science and engineering
    Montans, Francisco J.
    Chinesta, Francisco
    Gomez-Bombarelli, Rafael
    Kutz, J. Nathan
    COMPTES RENDUS MECANIQUE, 2019, 347 (11): : 845 - 855