首页> 外文会议>Workshop on sparse grids and applications >A Sparse Grid Method for Bayesian Uncertainty Quantification with Application to Large Eddy Simulation Turbulence Models
【24h】

A Sparse Grid Method for Bayesian Uncertainty Quantification with Application to Large Eddy Simulation Turbulence Models

机译:一种稀疏电网方法,用于贝叶斯不确定性定量应用于大型涡旋仿真湍流模型

获取原文

摘要

There is wide agreement that the accuracy of turbulence models suffer from their sensitivity with respect to physical input data, the uncertainties of user-elected parameters, as well as the model inadequacy. However, the application of Bayesian inference to systematically quantify the uncertainties in parameters, by means of exploring posterior probability density functions (PPDFs), has been hindered by the prohibitively daunting computational cost associated with the large number of model executions, in addition to daunting computation time per one turbulence simulation. In this effort, we perform in this paper an adaptive hierarchical sparse grid surrogate modeling approach to Bayesian inference of large eddy simulation (LES). First, an adaptive hierarchical sparse grid surrogate for the output of forward models is constructed using a relatively small number of model executions. Using such surrogate, the likelihood function can be rapidly evaluated at any point in the parameter space without simulating the computationally expensive LES model. This method is essentially similar to those developed in Zhang et al. (Water Resour Res 49:6871-6892,2013) for geophysical and groundwater models, but is adjusted and applied here for a much more challenging problem of uncertainty quantification of turbulence models. Through a numerical demonstration of the Smagorinsky model of two-dimensional flow around a cylinder at sub-critical Reynolds number, our approach is proven to significantly reduce the number of costly LES executions without losing much accuracy in the posterior probability estimation. Here, the model parameters are calibrated against synthetic data related to the mean flow velocity and Reynolds stresses at different locations in the flow wake. The influence of the user-elected LES parameters on the quality of output data will be discussed.
机译:There is wide agreement that the accuracy of turbulence models suffer from their sensitivity with respect to physical input data, the uncertainties of user-elected parameters, as well as the model inadequacy.然而,通过探索后验概率密度(PPDF)来系统地量化贝叶斯推理的应用,通过探索后概率密度函数(PPDF),除了令人生畏的计算之外,通过与大量模型执行相关的令人生畏的计算成本已经受到阻碍每一个湍流模拟时间。在这项努力中,我们在本文中执行了一种自适应分层稀疏电网代理模拟方法,跳过大型涡仿真(LES)。首先,使用相对少量的模型执行来构建用于向前模型的输出的自适应分层稀疏网格代理。使用这种替代工人,可以在参数空间中的任何点在不模拟计算昂贵的LES模型的任何点处快速评估似然函数。该方法与张等人开发的方法类似。 (水勘探49:6871-6892,2013)用于地球物理和地下水模型,但在此处进行调整,并在此处应用于湍流模型的不确定性量化的更具挑战性问题。通过在亚临界雷诺数周围的圆柱体周围的二维流动模型的数值演示,我们的方法被证明是显着减少昂贵的LES执行的数量,而不会在后验概率估计中失去大量准确性。这里,模型参数针对与平均流速相关的合成数据进行校准,并且在流动唤醒中的不同位置处的雷诺应力。将讨论用户选举LES参数对输出数据质量的影响。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号