2021
DOI: 10.48550/arxiv.2106.04166
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Incorporating NODE with Pre-trained Neural Differential Operator for Learning Dynamics

Abstract: Learning dynamics governed by differential equations is crucial for predicting and controlling the systems in science and engineering. Neural Ordinary Differential Equation (NODE), a deep learning model integrated with differential equations, learns the dynamics directly from the samples on the trajectory and shows great promise in the scientific field. However, the training of NODE highly depends on the numerical solver, which can amplify numerical noise and be unstable, especially for ill-conditioned dynamic… Show more

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