Geometric Fabrics for the Acceleration-based Design of Robotic Motion
This paper describes the pragmatic design and construction of geometric fabrics for shaping a robot's task-independent nominal behavior, capturing behavioral components such as obstacle avoidance, joint limit avoidance, redundancy resolution, global navigation heuristics, etc. Geometric fabrics...
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Zusammenfassung: | This paper describes the pragmatic design and construction of geometric
fabrics for shaping a robot's task-independent nominal behavior, capturing
behavioral components such as obstacle avoidance, joint limit avoidance,
redundancy resolution, global navigation heuristics, etc. Geometric fabrics
constitute the most concrete incarnation of a new mathematical formulation for
reactive behavior called optimization fabrics. Fabrics generalize recent work
on Riemannian Motion Policies (RMPs); they add provable stability guarantees
and improve design consistency while promoting the intuitive acceleration-based
principles of modular design that make RMPs successful. We describe a suite of
mathematical modeling tools that practitioners can employ in practice and
demonstrate both how to mitigate system complexity by constructing behaviors
layer-wise and how to employ these tools to design robust,
strongly-generalizing, policies that solve practical problems one would expect
to find in industry applications. Our system exhibits intelligent global
navigation behaviors expressed entirely as provably stable fabrics with zero
planning or state machine governance. |
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DOI: | 10.48550/arxiv.2010.14750 |