There has been an arising trend of adopting deep learning methods to study partial differential equations (PDEs). This article is to propose a Deep Learning Galerkin Method (DGM) for the closed-loop geothermal system, which is a new coupled multi-physics PDEs and mainly consists of a framework of underground heat exchange pipelines to extract the geothermal heat from the geothermal reservoir. This method is a natural combination of Galerkin Method and machine learning with the solution approximated by a neural network instead of a linear combination of basis functions. We train the neural network by randomly sampling the spatiotemporal points and minimize loss function to satisfy the differential operators, initial condition, boundary and interface conditions. Moreover, the approximate ability of the neural network is proved by the convergence of the loss function and the convergence of the neural network to the exact solution in L^2 norm under certain conditions. Finally, some numerical examples are carried out to demonstrate the approximation ability of the neural networks intuitively.
翻译:出现了采用深层次学习方法研究部分差异方程的趋势。本篇文章提议为闭环地热系统采用深学习Galerkin方法(DGM),这是一个新的多物理相联式PDE,主要包括地下热交换管道框架,以从地热水库中提取地热热。这种方法是Galerkin方法和机器学习与神经网络所近似的解决办法的自然结合,而不是基础功能的线性结合。我们通过随机抽样测点和尽量减少损失功能以满足不同操作者、初始条件、边界和界面条件,对神经网络进行训练,此外,神经网络的近似能力通过损失功能的趋同和神经网络在某些条件下与L%2规范中的确切解决办法的趋同得到证明。最后,一些数字实例用来直观地展示神经网络的近似能力。