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Numerical wave propagation aided by deep learning

Hieu Nguyen, Richard Tzong‐Han Tsai

2022Journal of Computational Physics17 citationsDOIOpen Access PDF

Abstract

We propose a deep learning approach for wave propagation in media with multiscale wave speed, using a second-order linear wave equation model. We use neural networks to enhance the accuracy of a given inaccurate coarse solver, which under-resolves a class of multiscale wave media and wave fields of interest. Our approach involves generating training data by the given computationally efficient coarse solver and another sufficiently accurate solver, applied to a class of wave media (described by their wave speed profiles) and initial wave fields. We find that the trained neural networks can approximate the nonlinear dependence of the propagation on the wave speed as long as the causality is appropriately sampled in training data. We combine the neural-network-enhanced coarse solver with the parareal algorithm and demonstrate that the coupled approach improves the stability of parareal algorithms for wave propagation and improves the accuracy of the enhanced coarse solvers.

Topics & Concepts

SolverWave propagationComputer scienceArtificial neural networkNonlinear systemStability (learning theory)Deep learningBackpropagationWave equationAlgorithmArtificial intelligenceMathematicsPhysicsMachine learningMathematical analysisOpticsQuantum mechanicsProgramming languageAdvanced Mathematical Modeling in EngineeringAdvanced Numerical Methods in Computational MathematicsElectromagnetic Simulation and Numerical Methods
Numerical wave propagation aided by deep learning | Litcius