Learning Hybrid Dynamics Models With Simulator-Informed Latent States
Katharina Ensinger, Sebastian Ziesche, Sebastian Trimpe

TL;DR
This paper introduces a hybrid dynamics modeling approach that combines learned models with simulator-informed latent states, using observers to infer and correct latent states over time, improving prediction accuracy and physical meaningfulness.
Contribution
It proposes a novel method that integrates a black-box simulator with learned models through observer-based inference of latent states, addressing errors and inaccuracies in hybrid modeling.
Findings
Enhanced prediction stability over time
Reduced error accumulation in dynamics predictions
Effective correction of model mismatch using the simulator
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 typically cause inaccuracies in these models. Consequently, hybrid modeling is an emerging trend that aims to combine the best of both worlds. In this paper, we propose a new approach to hybrid modeling, where we inform the latent states of a learned model via a black-box simulator. This allows to control the predictions via the simulator preventing them from accumulating errors.…
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Taxonomy
TopicsModel Reduction and Neural Networks · Time Series Analysis and Forecasting · Advanced Data Processing Techniques
