This paper proposes a novel Machine Learning-based approach to solve a Poisson problem with mixed boundary conditions. Leveraging Graph Neural Networks, we develop a model able to process unstructured grids with the advantage of enforcing boundary conditions by design. By directly minimizing the residual of the Poisson equation, the model attempts to learn the physics of the problem without the need for exact solutions, in contrast to most previous data-driven processes where the distance with the available solutions is minimized.
翻译:本文提出了一种新型的机器学习方法,在混合边界条件下解决普瓦森问题。我们利用图形神经网络,开发了一种能够处理无结构电网的模式,其优点是通过设计强制执行边界条件。模型通过直接尽量减少普瓦森方程式的剩余部分,试图在不需要确切解决方案的情况下学习问题的物理,而与大多数以前的数据驱动程序相比,与现有解决方案的距离最小化。