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Physics Informed Neural Networks (PINNs)for approximating nonlinear dispersive PDEs

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arxiv 2104.05584 v2 pith:BWAFUGXE submitted 2021-04-12 math.NA cs.NA

Physics Informed Neural Networks (PINNs)for approximating nonlinear dispersive PDEs

classification math.NA cs.NA
keywords dispersivepdespinnssolutionsapproximatenetworksneuralnonlinear
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We propose a novel algorithm, based on physics-informed neural networks (PINNs) to efficiently approximate solutions of nonlinear dispersive PDEs such as the KdV-Kawahara, Camassa-Holm and Benjamin-Ono equations. The stability of solutions of these dispersive PDEs is leveraged to prove rigorous bounds on the resulting error. We present several numerical experiments to demonstrate that PINNs can approximate solutions of these dispersive PDEs very accurately

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