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Machine-learning based error prediction approach for coarse-grid Computational Fluid Dynamics (CG-CFD)

机译:基于机器学习的粗网格计算流体动力学(CG-CFD)误差预测方法

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Computational Fluid Dynamics (CFD) is one of the modeling approaches essential to identifying the parameters that affect Containment Thermal Hydraulics (CTH) phenomena. While the CFD approach can capture the multidimensional behavior of CTH phenomena, its computational cost is high when modeling complex accident scenarios. To mitigate this expense, we propose reliance on coarse-grid CFD (CG-CFD). Coarsening the computational grid increases the grid-induced error thus requiring a novel approach that will produce a surrogate model predicting the distribution of the CG-CFD local error and correcting the fluid-flow variables. Given sufficiently fine-mesh simulations, a surrogate model can be trained to predict the CG-CFD local errors as a function of the coarse-grid local flow features. The surrogate model is constructed using Machine Learning (ML) regression algorithms. Two of the widely used ML regression algorithms were tested: Artificial Neural Network (ANN) and Random Forest (RF). The proposed CG-CFD method is illustrated with a three-dimensional turbulent flow inside a lid-driven cavity. We studied a set of scenarios to investigate the capability of the surrogate model to interpolate and extrapolate outside the training data range. The proposed method has proven capable of correcting the coarse-grid results and obtaining reasonable predictions for new cases (of different Reynolds number, different grid sizes, or larger geometries). Based on the investigated cases, we found this novel method maximizes the benefit of the available data and shows potential for a good predictive capability.
机译:计算流体动力学(CFD)是确定影响安全壳水力(CTH)现象的参数所必需的建模方法之一。尽管CFD方法可以捕获CTH现象的多维行为,但是在对复杂事故场景进行建模时其计算成本很高。为了减少此费用,我们建议依赖粗网格CFD(CG-CFD)。粗化计算网格会增加网格引起的误差,因此需要一种新颖的方法,该方法将生成替代模型,预测CG-CFD局部误差的分布并校正流体流量变量。给定足够细的网格模拟,可以训练一个替代模型来预测CG-CFD局部误差,该误差是粗网格局部流动特征的函数。替代模型是使用机器学习(ML)回归算法构建的。测试了两种广泛使用的ML回归算法:人工神经网络(ANN)和随机森林(RF)。所提出的CG-CFD方法在盖子驱动的腔体内以三维湍流进行了说明。我们研究了一组方案,以研究替代模型在训练数据范围之外进行内插和外推的能力。实践证明,所提出的方法能够校正粗网格结果并获得针对新情况(不同的雷诺数,不同的网格大小或较大的几何形状)的合理预测。根据调查的案例,我们发现这种新颖的方法可以最大程度地利用现有数据,并显示出良好的预测能力。

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