论文标题
非凸域中微分方程的神经网络解决方案:解决狭缝孔微流体设备中的电场
Neural Network Solutions to Differential Equations in Non-Convex Domains: Solving the Electric Field in the Slit-Well Microfluidic Device
论文作者
论文摘要
求解微分方程的神经网络方法用于近似狭缝微流体设备中的电势和相应的电场。该设备的几何形状是非凸,这是使用神经网络方法解决的具有挑战性的问题。为了验证该方法,将神经网络解决方案与使用有限元方法获得的参考溶液进行比较。提出了其他指标,这些指标衡量了神经网络在训练过程中未明确执行的重要物理不变性:空间对称性和电力通量的保护。最后,作为对有效性的应用特定测试,神经网络电场被纳入粒子模拟中。方便地,用于训练神经网络的相同损失功能似乎也提供了网络真实错误的可靠估计器,这是由此处考虑的任何指标衡量的。在所有指标中,即使按计算成本归一化,深层神经网络也明显胜过浅的神经网络。总而言之,结果表明,神经网络方法可以可靠地产生可接受准确性的解决方案,以在随后的物理计算(例如粒子模拟)中使用。
The neural network method of solving differential equations is used to approximate the electric potential and corresponding electric field in the slit-well microfluidic device. The device's geometry is non-convex, making this a challenging problem to solve using the neural network method. To validate the method, the neural network solutions are compared to a reference solution obtained using the finite element method. Additional metrics are presented that measure how well the neural networks recover important physical invariants that are not explicitly enforced during training: spatial symmetries and conservation of electric flux. Finally, as an application-specific test of validity, neural network electric fields are incorporated into particle simulations. Conveniently, the same loss functional used to train the neural networks also seems to provide a reliable estimator of the networks' true errors, as measured by any of the metrics considered here. In all metrics, deep neural networks significantly outperform shallow neural networks, even when normalized by computational cost. Altogether, the results suggest that the neural network method can reliably produce solutions of acceptable accuracy for use in subsequent physical computations, such as particle simulations.