论文标题
物理知识的神经网络,用于超音速流中的反问题
Physics-informed neural networks for inverse problems in supersonic flows
论文作者
论文摘要
设计专门的航空航天车通常需要进行逆超音速压缩流问题的准确解决方案。特别是,我们考虑了一个问题,在该问题中,我们可以从Schlieren摄影中提供可用于密度梯度的数据,以及在流入和部分壁边界的数据。众所周知,这些反问题是困难的,传统方法可能不足以解决此类不良的反问题。为此,我们采用了物理知识的神经网络(PINN)及其扩展版本的扩展Pinns(XPINNS),域分解允许在每个子域中部署本地功能强大的神经网络,这些神经网络可以在子域中提供额外的表达性,预计可以在一个复杂的解决方案中提供复杂的解决方案。除了管理可压缩的欧拉方程外,我们还强制执行熵条件以获得粘度解决方案。此外,我们在密度和压力上执行阳性条件。我们考虑涉及二维扩张波,二维倾斜和弓形冲击波的逆问题。我们比较了PINNS和XPINN获得的解决方案,并调用了一些理论结果,这些结果可用于决定两种方法的概括误差。
Accurate solutions to inverse supersonic compressible flow problems are often required for designing specialized aerospace vehicles. In particular, we consider the problem where we have data available for density gradients from Schlieren photography as well as data at the inflow and part of wall boundaries. These inverse problems are notoriously difficult and traditional methods may not be adequate to solve such ill-posed inverse problems. To this end, we employ the physics-informed neural networks (PINNs) and its extended version, extended PINNs (XPINNs), where domain decomposition allows deploying locally powerful neural networks in each subdomain, which can provide additional expressivity in subdomains, where a complex solution is expected. Apart from the governing compressible Euler equations, we also enforce the entropy conditions in order to obtain viscosity solutions. Moreover, we enforce positivity conditions on density and pressure. We consider inverse problems involving two-dimensional expansion waves, two-dimensional oblique and bow shock waves. We compare solutions obtained by PINNs and XPINNs and invoke some theoretical results that can be used to decide on the generalization errors of the two methods.