A method is presented that allows to reduce a problem described by differential equations with initial and boundary conditions to the problem described only by differential equations. The advantage of using the modified problem for physics-informed neural networks (PINNs) methodology is that it becomes possible to represent the loss function in the form of a single term associated with differential equations, thus eliminating the need to tune the scaling coefficients for the terms related to boundary and initial conditions. The weighted loss functions respecting causality were modified and new weighted loss functions based on generalized functions are derived. Numerical experiments have been carried out for a number of problems, demonstrating the accuracy of the proposed methods.
翻译:提出一种方法,将一个包括初值边界条件的微分方程问题简化为仅包含微分方程问题。使用修改后的问题针对考虑物理因果关系的神经网络训练可以将损失函数表示为与微分方程相关的单个项,这消除了调整与边界和初值条件相关的项的比例系数的需要。对考虑因果关系的加权损失函数进行了修改,并推导了基于广义函数的新加权损失函数。对一些问题进行了数值实验,证明了所提出方法的准确性。