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Parameterized neural ordinary differential equations: applications to computational physics problems

Kookjin Lee, Eric Parish

2021Proceedings of the Royal Society A Mathematical Physical and Engineering Sciences50 citationsDOIOpen Access PDF

Abstract

This work proposes an extension of neural ordinary differential equations (NODEs) by introducing an additional set of ODE input parameters to NODEs. This extension allows NODEs to learn multiple dynamics specified by the input parameter instances. Our extension is inspired by the concept of parameterized ODEs, which are widely investigated in computational science and engineering contexts, where characteristics of the governing equations vary over the input parameters. We apply the proposed parameterized NODEs (PNODEs) for learning latent dynamics of complex dynamical processes that arise in computational physics, which is an essential component for enabling rapid numerical simulations for time-critical physics applications. For this, we propose an encoder–decoder-type framework, which models latent dynamics as PNODEs. We demonstrate the effectiveness of PNODEs on benchmark problems from computational physics.

Topics & Concepts

Parameterized complexityOrdinary differential equationOdeDynamical systems theoryBenchmark (surveying)Set (abstract data type)Computer scienceDifferential equationExtension (predicate logic)Applied mathematicsTheoretical computer scienceAlgorithmMathematicsPhysicsMathematical analysisGeographyGeodesyProgramming languageQuantum mechanicsModel Reduction and Neural NetworksNeural Networks and ApplicationsComputational Physics and Python Applications
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