The aerodynamic optimization process of cars requires multiple iterations between aerodynamicists and stylists. Response Surface Modeling and Reduced-Order Modeling are commonly used to eliminate the overhead due to Computational Fluid Dynamics, leading to faster iterations. However, a primary drawback of these models is that they can work only on the parametrized geometric features they were trained with. This study evaluates if deep learning models can predict the drag coefficient for an arbitrary input geometry without explicit parameterization. We use two similar data sets based on the publicly available DrivAer geometry for training. We use a modified U-Net architecture that uses Signed Distance Fields to represent the input geometries. Our models outperform the existing models by at least 11% in prediction accuracy for the drag coefficient. We achieved this improvement by combining multiple data sets that were created using different parameterizations, which is not possible with the methods currently used. We have also shown that it is possible to predict velocity fields and drag coefficient concurrently and that simple data augmentation methods can improve the results. In addition, we have performed an occlusion sensitivity study on our models to understand what information is used to make predictions. From the occlusion sensitivity study, we showed that the models were able to identify the geometric features and have discovered that the model has learned to exploit the global information present in the SDF. In contrast to the currently operational method, where design changes are restricted to the initially defined parameters, this study brings surrogate models one step closer to the long-term goal of having a model that can be used for approximate aerodynamic evaluation of unseen, arbitrary vehicle shapes, thereby providing complete design freedom to the vehicle stylists.
翻译:汽车的空气动力优化过程需要空气动力学家和气质设计师之间的多次迭代。 反应表层建模和减少轨道建模通常用于消除由于计算流体动态而导致的间接费用, 从而导致更快的迭代。 但是, 这些模型的主要缺点是, 它们只能对所训练的平衡化几何特征起作用。 本研究评估深层学习模型能否预测任意输入几何的拖动系数而没有明确的参数化。 我们使用基于公开提供的 Drivaer 几何方法的两种类似的数据集来进行培训。 我们最初使用一个修改过的 U- Net 参数来消除由于计算流体流体动态而导致的顶端值, 从而导致加速。 我们的模型比现有模型比现有模型高出了至少11%的比值。 我们通过将使用不同参数创建的多个数据集结合起来, 而这与目前使用的方法是不可能的。 我们还表明, 有可能同时预测速度字段和拖动系数, 而简单的数据增强方法可以改进结果。 此外, 我们从一个更接近的直径定位字段字段字段字段字段字段字段, 利用了一种精确度设计模型, 我们的精确度设计模型, 利用了一种推算方法, 我们的精确度研究, 利用了一种推测算方法, 利用了一种测深度模型, 我们的深度模型, 从而可以理解了一种测算了一种方法, 的测算了一种测算了一种方法, 的精确度模型, 以测算了一种方法, 。