Learning Hybrid Dynamics Models with Simulator-Informed Latent States
Katharina Ensinger,
Sebastian Ziesche,
Sebastian Trimpe
Abstract:Dynamics model learning deals with the task of inferring unknown dynamics from measurement data and predicting the future behavior of the system. A typical approach to address this problem is to train recurrent models. However, predictions with these models are often not physically meaningful. Further, they suffer from deteriorated behavior over time due to accumulating errors. Often, simulators building on first principles are available being physically meaningful by design. However, modeling simplifications … Show more
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