Group A, Poster #115, Computational Science (CS)
TerraPINN: solving the seismic wave equation with physics informed neural networks
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Poster Presentation
2022 SCEC Annual Meeting, Poster #115, SCEC Contribution #11971 VIEW PDF
ly accelerating existing solvers, we would be able to generate much larger ensembles of seismic wavefield data through realistic media. However, because the forward solution is intrinsically expensive, we do not have large volumes of training data. The physics informed neural network (PINN) framework offers a way to circumvent this problem. Instead of training on synthetic data, we propose solutions and then penalise their misfit to the wave equation. Early investigations of PINNs have shown much promise, however they have so far struggled to solve multi scale problems, such as the seismic wave equation. In TerraPINN, we propose a hybrid approach between PINNs and traditional supervised machine learning. Recognising the approximate axisymmetry of seismic wave propagation, we first fit a reduced dimension radial wavefield in a laterally homogeneous and isotopic medium using a traditional supervised machine learning framework. We then expand azimuthally and train for a correction operator using PINNs. The combined network size has 2 orders of magnitude fewer parameters and trains 10x faster than an equivalent naive PINN formulation in 2D acoustic test cases.
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