Solving for the frequency-domain scattered wavefield via physics-informed neural network (PINN) has great potential in seismic modeling and inversion. However, when dealing with high-frequency wavefields, its accuracy and training cost limits its applications. Thus, we propose a novel implementation of PINN using frequency upscaling and neuron splitting, which allows the neural network model to grow in size as we increase the frequency while leveraging the information from the pre-trained model for lower-frequency wavefields, resulting in fast convergence to high-accuracy solutions. Numerical results show that, compared to the commonly used PINN with random initialization, the proposed PINN exhibits notable superiority in terms of convergence and accuracy and can achieve neuron based high-frequency wavefield solutions with a two-hidden-layer model.
翻译:通过物理知情神经网络(PINN)解决频域分散的波场,在地震建模和倒置方面具有巨大潜力,然而,在处理高频波场时,其准确性和培训成本限制了其应用。因此,我们提议采用频率升级和神经分解,以创新方式实施PINN,这样神经网络模型可以随着频率的增加而扩大,同时利用预先培训的低频波场模型提供的信息,导致快速与高准确性解决方案相融合。 数字结果显示,与常用的PINN和随机初始化相比,拟议的PINN在趋同性和准确性方面表现出显著优势,并能够用双层模型实现基于神经的高频波场解决方案。