Closed-loop multi-step planning with innate physics knowledge
Giulia Lafratta, Bernd Porr, Christopher Chandler, Alice Miller
- 发表年份
- 2024
- 访问权限
- 开放获取
摘要
We present a hierarchical framework to solve robot planning as an input control problem. At the lowest level are temporary closed control loops, ("tasks"), each representing a behaviour, contingent on a specific sensory input and therefore temporary. At the highest level, a supervising "Configurator" directs task creation and termination. Here resides "core" knowledge as a physics engine, where sequences of tasks can be simulated. The Configurator encodes and interprets simulation results,based on which it can choose a sequence of tasks as a plan. We implement this framework on a real robot and test it in an overtaking scenario as proof-of-concept.
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