Data-efficient, Explainable and Safe Box Manipulation: Illustrating the Advantages of Physical Priors in Model-Predictive Control
Model-based RL/control have gained significant traction in robotics. Yet, these approaches often remain data-inefficient and lack the explainability of hand-engineered solutions. This makes them difficult to debug/integrate in safety-critical settings. However, in many systems, prior knowledge of en...
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Zusammenfassung: | Model-based RL/control have gained significant traction in robotics. Yet,
these approaches often remain data-inefficient and lack the explainability of
hand-engineered solutions. This makes them difficult to debug/integrate in
safety-critical settings. However, in many systems, prior knowledge of
environment kinematics/dynamics is available. Incorporating such priors can
help address the aforementioned problems by reducing problem complexity and the
need for exploration, while also facilitating the expression of the decisions
taken by the agent in terms of physically meaningful entities. Our aim with
this paper is to illustrate and support this point of view via a case-study. We
model a payload manipulation problem based on a real robotic system, and show
that leveraging prior knowledge about the dynamics of the environment in an MPC
framework can lead to improvements in explainability, safety and
data-efficiency, leading to satisfying generalization properties with less
data. |
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DOI: | 10.48550/arxiv.2303.01563 |