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Learning an Eddy Viscosity Model Using Shrinkage and Bayesian Calibration: A Jet-in-Crossflow Case Study

机译:使用收缩和贝叶斯校准学习涡粘度模型:射流杂志研究

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We demonstrate a statistical procedure for learning a high-order eddy viscosity model (EVM) from experimental data and using it to improve the predictive skill of a Reynolds-averaged Navier–Stokes (RANS) simulator. The method is tested in a three-dimensional (3D), transonic jet-in-crossflow (JIC) configuration. The process starts with a cubic eddy viscosity model (CEVM) developed for incompressible flows. It is fitted to limited experimental JIC data using shrinkage regression. The shrinkage process removes all the terms from the model, except an intercept, a linear term, and a quadratic one involving the square of the vorticity. The shrunk eddy viscosity model is implemented in an RANS simulator and calibrated, using vorticity measurements, to infer three parameters. The calibration is Bayesian and is solved using a Markov chain Monte Carlo (MCMC) method. A 3D probability density distribution for the inferred parameters is constructed, thus quantifying the uncertainty in the estimate. The phenomenal cost of using a 3D flow simulator inside an MCMC loop is mitigated by using surrogate models (“curve-fits”). A support vector machine classifier (SVMC) is used to impose our prior belief regarding parameter values, specifically to exclude nonphysical parameter combinations. The calibrated model is compared, in terms of its predictive skill, to simulations using uncalibrated linear and CEVMs. We find that the calibrated model, with one quadratic term, is more accurate than the uncalibrated simulator. The model is also checked at a flow condition at which the model was not calibrated.
机译:我们展示了从实验数据学习高阶涡粘度模型(EVM)的统计程序,并使用它来改善雷诺平均Navier-Stokes(RAN)模拟器的预测技能。该方法在三维(3D)中测试,横向射流杂交流(JIC)配置。该过程从为不可压缩流动开发的立方涡粘度模型(CEVM)开始。它适用于有限的实验性JIC数据,使用收缩回归。收缩过程从模型中移除所有术语,除了截距,线性术语和涉及涡旋的平方之外。收缩涡粘度模型在Rans模拟器中实现并使用涡旋测量校准,以推断三个参数。校准是贝叶斯,并使用马尔可夫链蒙特卡罗(MCMC)方法来解决。构建了推断参数的3D概率密度分布,从而量化估计中的不确定性。使用替代模型(“曲线适合”)减轻了使用MCMC环路内的3D流模拟器的现象成本。支持向量机分类器(SVMC)用于施加关于参数值的先前信仰,具体是为了排除非物理参数组合。根据其预测技能,将校准模型与使用未校准的线性和CEVM进行比较。我们发现校准的模型,具有一个二次术语,比未校准的模拟器更准确。还在未校准模型的流量条件下检查该模型。

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