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Transferable Model for Shape Optimization subject to Physical Constraints

机译:形状优化的可转换模型受到物理限制

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The interaction of neural networks with physical equations offers a wide range of applications. We provide a method which enables a neural network to transform objects subject to given physical constraints. Therefore an U-Net architecture is used to learn the underlying physical behaviour of fluid flows. The network is used to infer the solution of flow simulations, which will be shown for a wide range of generic channel flow simulations. Physical meaningful quantities can be computed on the obtained solution, e.g. the total pressure difference or the forces on the objects. A Spatial Transformer Network with thin-plate-splines is used for the interaction between the physical constraints and the geometric representation of the objects. Thus, a transformation from an initial to a target geometry is performed such that the object is fulfilling the given constraints. This method is fully differentiable i.e., gradient informations can be used for the transformation. This can be seen as an inverse design process. The advantage of this method over many other proposed methods is, that the physical constraints are based on the inferred flow field solution. Thus, we have a transferable model which can be applied to varying problem setups and is not limited to a given set of geometry parameters or physical quantities.
机译:神经网络与物理方程的相互作用提供了广泛的应用。我们提供一种方法,该方法使神经网络能够将对象转换为给定的物理约束。因此,U-Net架构用于学习流体流动的底层物理行为。该网络用于推断出流量模拟的解决方案,这将显示广泛的通道流量模拟。可以在所获得的解决方案上计算物理意义的数量,例如,对象上的总压力差或力。具有薄板样条的空间变压器网络用于物理约束与对象的几何表示之间的交互。因此,执行从初始到目标几何的转换,使得对象正在满足给定的约束。该方法是完全可分辨的,即,梯度信息可用于转换。这可以被视为逆设计过程。这种方法在许多其他提出方法中的优点是,物理约束基于推断的流场解决方案。因此,我们具有可转移模型,其可以应用于变化的问题设置,并且不限于给定的一组几何参数或物理量。

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