Physics-informed neural networks have emerged as an alternative method for solving partial differential equations. However, for complex problems, the training of such networks can still require high-fidelity data which can be expensive to generate. To reduce or even eliminate the dependency on high-fidelity data, we propose a novel multi-fidelity architecture which is based on a feature space shared by the low- and high-fidelity solutions. In the feature space, the projections of the low-fidelity and high-fidelity solutions are adjacent by constraining their relative distance. The feature space is represented with an encoder and its mapping to the original solution space is effected through a decoder. The proposed multi-fidelity approach is validated on forward and inverse problems for steady and unsteady problems described by partial differential equations.
翻译:物理信息神经网络已成为解决偏微分方程的另一种方法。然而,对于复杂问题,这种网络的训练仍然可能需要昂贵的高保真度数据。为了减少或甚至消除对高保真度数据的依赖性,我们提出了一种基于低保真度和高保真度解之间共享特征空间的新型多保真度架构。在特征空间中,低保真度和高保真度解的投影通过约束它们的相对距离是相邻的。特征空间用编码器来表示,通过解码器实现到原始解空间的映射。所提出的多保真度方法在偏微分方程描述的定态和非定态问题的正问题和反问题上得到了验证。