论文标题
通过图形网络学习基于网格的仿真
Learning Mesh-Based Simulation with Graph Networks
论文作者
论文摘要
基于网格的模拟对于在科学和工程的许多学科中建模复杂的物理系统是核心。网格表示支持强大的数值集成方法及其分辨率可以适应于准确性和效率之间的有利权衡。但是,高维科学模拟运行非常昂贵,并且必须将求解器和参数单独调整到所研究的每个系统。在这里,我们介绍了Meshgraphnets,这是一种使用图神经网络学习基于网格的模拟的框架。可以训练我们的模型在网格图上传递消息,并在正向模拟过程中调整网格离散化。我们的结果表明,它可以准确预测广泛的物理系统的动力学,包括空气动力学,结构力学和布。该模型的适应性支持学习独立的动态,并可以在测试时扩展到更复杂的状态空间。我们的方法也高效,运行1-2个数量级比训练的模拟更快。我们的方法扩大了神经网络模拟器可以操作的一系列问题,并有望提高复杂的科学建模任务的效率。
Mesh-based simulations are central to modeling complex physical systems in many disciplines across science and engineering. Mesh representations support powerful numerical integration methods and their resolution can be adapted to strike favorable trade-offs between accuracy and efficiency. However, high-dimensional scientific simulations are very expensive to run, and solvers and parameters must often be tuned individually to each system studied. Here we introduce MeshGraphNets, a framework for learning mesh-based simulations using graph neural networks. Our model can be trained to pass messages on a mesh graph and to adapt the mesh discretization during forward simulation. Our results show it can accurately predict the dynamics of a wide range of physical systems, including aerodynamics, structural mechanics, and cloth. The model's adaptivity supports learning resolution-independent dynamics and can scale to more complex state spaces at test time. Our method is also highly efficient, running 1-2 orders of magnitude faster than the simulation on which it is trained. Our approach broadens the range of problems on which neural network simulators can operate and promises to improve the efficiency of complex, scientific modeling tasks.