Neural partial differential equations for chaotic systems

Author:

Gelbrecht MaximilianORCID,Boers NiklasORCID,Kurths Jürgen

Abstract

Abstract When predicting complex systems one typically relies on differential equation which can often be incomplete, missing unknown influences or higher order effects. By augmenting the equations with artificial neural networks we can compensate these deficiencies. We show that this can be used to predict paradigmatic, high-dimensional chaotic partial differential equations even when only short and incomplete datasets are available. The forecast horizon for these high dimensional systems is about an order of magnitude larger than the length of the training data.

Funder

Horizon 2020 Framework Programme

Volkswagen Foundation

Russian Ministry of Science and Education

German Federal Ministry of Education and Research and the Land Brandenburg

Deutsche Forschungsgemeinschaft (DFG)/The São Paulo Research Foundation

Publisher

IOP Publishing

Subject

General Physics and Astronomy

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