论文标题
具有浅蒙版自动编码器的快速准确的物理信息降低订购模型
A fast and accurate physics-informed neural network reduced order model with shallow masked autoencoder
论文作者
论文摘要
传统的线性子空间还原订单模型(LS-ROM)能够加速物理模拟,其中固有的解决方案空间落入具有较小尺寸的子空间,即,解决方案空间的kolmogorov n脚步很小。但是,对于不适合这种类型的物理现象,例如,任何以对流为主的流动现象,例如在交通流量,大气流和汽车上的空气流动,低维线性子空间近似于解决方案。为了解决此类案例,我们开发了一种快速,准确的物理知识的神经网络ROM,即非线性歧管ROM(NM-ROM),它可以更好地近似于LS-ROM的潜在空间尺寸较小的高效率模型解决方案。我们的方法利用了用于求解相应的全订单模型的现有数值方法。通过在NM-ROM的背景下开发超还原技术来实现效率。数值结果表明,神经网络可以从1D和2D汉堡方程中学习更有效的潜在空间表示。 1D汉堡的速度最高为2.6,而2D汉堡方程的加速度为11.7,通过通过超减少术语对非线性术语进行适当处理。最后,得出了NM-ROM的后验误差界限,该误差范围考虑了超降低的操作员。
Traditional linear subspace reduced order models (LS-ROMs) are able to accelerate physical simulations, in which the intrinsic solution space falls into a subspace with a small dimension, i.e., the solution space has a small Kolmogorov n-width. However, for physical phenomena not of this type, e.g., any advection-dominated flow phenomena, such as in traffic flow, atmospheric flows, and air flow over vehicles, a low-dimensional linear subspace poorly approximates the solution. To address cases such as these, we have developed a fast and accurate physics-informed neural network ROM, namely nonlinear manifold ROM (NM-ROM), which can better approximate high-fidelity model solutions with a smaller latent space dimension than the LS-ROMs. Our method takes advantage of the existing numerical methods that are used to solve the corresponding full order models. The efficiency is achieved by developing a hyper-reduction technique in the context of the NM-ROM. Numerical results show that neural networks can learn a more efficient latent space representation on advection-dominated data from 1D and 2D Burgers' equations. A speedup of up to 2.6 for 1D Burgers' and a speedup of 11.7 for 2D Burgers' equations are achieved with an appropriate treatment of the nonlinear terms through a hyper-reduction technique. Finally, a posteriori error bounds for the NM-ROMs are derived that take account of the hyper-reduced operators.