MultiPDENet: PDE-embedded Learning with Multi-time-stepping for Accelerated Flow Simulation
Qi Wang, Yuan Mi, Haoyun Wang, Yi Zhang, Ruizhi Chengze, and Hongsheng Liu, Ji-Rong Wen, Hao Sun

TL;DR
MultiPDENet is a novel PDE-embedded neural network that combines numerical schemes and multiscale time stepping to accelerate flow simulations, improve long-term prediction accuracy, and reduce data dependency.
Contribution
It introduces a PDE-embedded network with multiscale time integration and a convolutional filter based on finite difference structures for efficient flow simulation.
Findings
Accurately predicts long-term flow dynamics.
Outperforms existing neural models in accuracy.
Achieves speedup over classical numerical methods.
Abstract
Solving partial differential equations (PDEs) by numerical methods meet computational cost challenge for getting the accurate solution since fine grids and small time steps are required. Machine learning can accelerate this process, but struggle with weak generalizability, interpretability, and data dependency, as well as suffer in long-term prediction. To this end, we propose a PDE-embedded network with multiscale time stepping (MultiPDENet), which fuses the scheme of numerical methods and machine learning, for accelerated simulation of flows. In particular, we design a convolutional filter based on the structure of finite difference stencils with a small number of parameters to optimize, which estimates the equivalent form of spatial derivative on a coarse grid to minimize the equation's residual. A Physics Block with a 4th-order Runge-Kutta integrator at the fine time scale is…
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Taxonomy
TopicsModel Reduction and Neural Networks · Lattice Boltzmann Simulation Studies · Plasma and Flow Control in Aerodynamics
