Finite element inspired networks: Learning interpretable deformable object dynamics from partial observations
Mamedov, Shamil, Geist, A. René, Swevers, Jan, Trimpe, Sebastian
–arXiv.org Artificial Intelligence
Accurate simulation of deformable linear object (DLO) dynamics is challenging if the task at hand requires a human-interpretable model that also yields fast predictions. To arrive at such a model, we draw inspiration from the rigid finite element method (R-FEM) and model a DLO as a serial chain of rigid bodies whose internal state is unrolled through time by a dynamics network. As this state is not observed directly, the dynamics network is trained jointly with a physics-informed encoder which maps observed motion variables to the DLO's hidden state. To encourage that the state acquires a physically meaningful representation, we leverage the forward kinematics of the underlying R-FEM model as a decoder. Through robot experiments we demonstrate that the proposed architecture provides an easy-to-handle, yet capable DLO dynamics model yielding physically interpretable predictions from partial observations. The project code is available at: \url{https://tinyurl.com/fei-networks}
arXiv.org Artificial Intelligence
Nov-19-2023