The long runtime of high-fidelity partial differential equation (PDE) solvers makes them unsuitable for time-critical applications. We propose to accelerate PDE solvers using reduced-order modeling (ROM). Whereas prior ROM approaches reduce the dimensionality of discretized vector fields, our continuous reduced-order modeling (CROM) approach builds a smooth, low-dimensional manifold of the continuous vector fields themselves, not their discretization. We represent this reduced manifold using continuously differentiable neural fields, which may train on any and all available numerical solutions of the continuous system, even when they are obtained using diverse methods or discretizations. We validate our approach on an extensive range of PDEs with training data from voxel grids, meshes, and point clouds. Compared to prior discretization-dependent ROM methods, such as linear subspace proper orthogonal decomposition (POD) and nonlinear manifold neural-network-based autoencoders, CROM features higher accuracy, lower memory consumption, dynamically adaptive resolutions, and applicability to any discretization. For equal latent space dimension, CROM exhibits 79$\times$ and 49$\times$ better accuracy, and 39$\times$ and 132$\times$ smaller memory footprint, than POD and autoencoder methods, respectively. Experiments demonstrate 109$\times$ and 89$\times$ wall-clock speedups over unreduced models on CPUs and GPUs, respectively.
翻译:长期的高度纤维化部分差异方程式(PDE)解析器(PDE)的长期时间使高纤维化部分异差方程(PDE)解析器不适合时间紧迫的应用。我们提议使用减序模型(ROM)加速PDE解析器(PDE解解解解器)。虽然先前的ROM方法降低了离散矢量场的维度,但我们的连续减序模型(CROM)方法建立了连续矢量矢量场本身的平滑、低维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维维