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OPTIMAL SENSOR PLACEMENT FOR THE ESTIMATION OF TURBULENCE MODEL PARAMETERS IN CFD

机译:估计CFD中湍流模型参数的最佳传感器位置

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摘要

The optimal placement of sensors for the estimation of turbulence model parameters in computational fluid dynamics is presented. The information entropy (IE), applied on the posterior uncertainty of the model parameters inferred from Bayesian analysis, is used as a scalar measure of uncertainty. Using an asymptotic approximation, the IE depends on nominal values of the CFD model and prediction error model parameters. It is derived from the sensitivities of the flow quantities predicted by the flow model with respect to the model parameters. A stochastic optimization algorithm is used to perform the minimization of the IE in the continuous design space. Robustness to uncertainties in the nominal model parameters and flow conditions is addressed. Information redundancy due to sensor clustering is addressed by introducing spatially correlated prediction error models. The algorithm is applied to the turbulent flow through a backward-facing step where the optimal locations of velocity and Reynolds shear stress profiles of sensors are sought for the estimation of the parameters of the Spalart-Allmaras turbulence model.
机译:提出了用于计算流体动力学中湍流模型参数估计的传感器的最佳位置。从贝叶斯分析推断出的模型参数的后验不确定性上应用的信息熵(IE)被用作不确定性的标量度量。使用渐近逼近,IE取决于CFD模型的标称值和预测误差模型参数。它是由流量模型相对于模型参数预测的流量敏感性得出的。随机优化算法用于在连续设计空间中执行IE的最小化。解决了标称模型参数和流量条件不确定性的鲁棒性问题。通过引入空间相关的预测误差模型,可以解决由于传感器群集引起的信息冗余。该算法通过面向后的步骤应用于湍流,在该步骤中,寻找传感器的速度和雷诺剪切应力分布的最佳位置,以估算Spalart-Allmaras湍流模型的参数。

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