Please use this identifier to cite or link to this item: https://repositori.mypolycc.edu.my/jspui/handle/123456789/7167
Title: SIM-TO-REAL OF SOFT ROBOTS WITH LEARNED RESIDUAL PHYSICS
Authors: Gao, Junpeng
Michelis, Mike Y.
Spielberg, Andrew
Katzschmann, Robert K.
Keywords: Control and learning for soft robots
Dynamics
Optimization and optimal control
Simulation
Deep learning methods
Modeling
Animation
Issue Date: Oct-2024
Publisher: IEEE ACCESS
Series/Report no.: IEEE Robotics And Automation Letters;Vol. 9, No. 10
Abstract: Accurately modeling soft robots in simulation is computationally expensive and commonly falls short of representing the real world. This well-known discrepancy, known as the sim-to-real gap, can have several causes, such as coarsely approximated geometry and material models, manufacturing defects, viscoelasticity and plasticity, and hysteresis effects. Residual physics networks learn from real-world data to augment a discrepant model and bring it closer to reality. Here, we present a residual physics method for modeling soft robots with large degrees of freedom. We train neural networks to learn a residual term — the modeling error between simulated and physical systems. Concretely, the residual term is a force applied on the whole simulated mesh, while real position data is collected with only sparse motion markers. The physical prior of the analytical simulation provides a starting point for the residual network, and the combined model is more informed than if physics were learned tabula rasa. We demonstrate our method on 1) a silicone elastomeric beam and 2) a soft pneumatic arm with hard-to-model, anisotropic fiber reinforcements. Our method outperforms traditional system identification up to 60%. We show that residual physics need not be limited to low degrees of freedom but can effectively bridge the sim-to-real gap for high dimensional systems.
URI: https://repositori.mypolycc.edu.my/jspui/handle/123456789/7167
Appears in Collections:JABATAN KEJURUTERAAN MEKANIKAL

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