MPINeuralODE combines soft physics residuals with multiple-initial-condition training to reduce out-of-sample and long-horizon errors in dynamical system learning.
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MPINeuralODE: Multiple-Initial-Condition Physics-Informed Neural ODEs for Globally Consistent Dynamical System Learning
MPINeuralODE combines soft physics residuals with multiple-initial-condition training to reduce out-of-sample and long-horizon errors in dynamical system learning.
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