基于数值微分的物理信息神经网络方法在非矩形区域中的应用

豪 康
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Application of Physics Informed Neural Net-work Method Based on Numerical Differentiation in Non-Rectangular Regions
Physics-Informed Neural Networks (PINN) is a novel data-driven numerical framework for solving
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