论文标题
流体模拟中物理知识的神经网络的经验报告:陷阱和挫败感
Experience report of physics-informed neural networks in fluid simulations: pitfalls and frustration
论文作者
论文摘要
尽管PINN(物理信息的神经网络)现在被视为对传统CFD(计算流体动力学)求解器的补充,而不是替代者,但它们在没有给定数据的情况下求解Navier-Stokes方程的能力仍然是极大的兴趣。该报告提出了我们不太成功的实验,即用Pinn来求解Navier-Stokes方程,以替代传统求解器。我们的目标是通过我们的实验,为读者做好准备,如果他们对无数据的Pinn感兴趣,他们可能面临的挑战。在这项工作中,我们使用了两个标准流问题:RE = 100时的2D Taylor-Green涡流和RE = 200时的2D缸流。 Pinn方法解决了2D Taylor-Green涡流问题,并以可接受的结果为基础,我们将这种流程作为精度和性能基准。对于Pinn方法的准确性,需要进行大约32个小时的训练,以匹配16x16有限差模拟的准确性,该模拟的准确性不到20秒。另一方面,2D气缸流并未产生物理溶液。 Pinn方法的行为像稳定的求解器,没有捕获涡流脱落现象。通过分享我们的经验,我们要强调,Pinn方法仍然是一种正在进行的工作,尤其是在解决流量问题的情况下,没有任何给定的数据。在此类应用中,需要更多的工作才能使PINN可行解决现实世界中的问题。
Though PINNs (physics-informed neural networks) are now deemed as a complement to traditional CFD (computational fluid dynamics) solvers rather than a replacement, their ability to solve the Navier-Stokes equations without given data is still of great interest. This report presents our not-so-successful experiments of solving the Navier-Stokes equations with PINN as a replacement for traditional solvers. We aim to, with our experiments, prepare readers for the challenges they may face if they are interested in data-free PINN. In this work, we used two standard flow problems: 2D Taylor-Green vortex at Re=100 and 2D cylinder flow at Re=200. The PINN method solved the 2D Taylor-Green vortex problem with acceptable results, and we used this flow as an accuracy and performance benchmark. About 32 hours of training were required for the PINN method's accuracy to match the accuracy of a 16x16 finite-difference simulation, which took less than 20 seconds. The 2D cylinder flow, on the other hand, did not produce a physical solution. The PINN method behaved like a steady-flow solver and did not capture the vortex shedding phenomenon. By sharing our experience, we would like to emphasize that the PINN method is still a work-in-progress, especially in terms of solving flow problems without any given data. More work is needed to make PINN feasible for real-world problems in such applications.