arXiv (Cornell University)
Capturing missing physics in climate model parameterizations using neural differential equations
October 2020 • Ali J. Ramadhan, John C. Marshall, André M. C. Souza, Gregory LeClaire Wagner, Manvitha Ponnapati, Christopher Rackauckas
We explore how neural differential equations (NDEs) may be trained on highly resolved fluid-dynamical models of unresolved scales providing an ideal framework for data-driven parameterizations in climate models. NDEs overcome some of the limitations of traditional neural networks (NNs) in fluid dynamical applications in that they can readily incorporate conservation laws and boundary conditions and are stable when integrated over time. We advocate a method that employs a 'residual' approach, in which the NN is use…