Risk-aware Meta-level Decision Making for Exploration Under Uncertainty
Robotic exploration of unknown environments is fundamentally a problem of decision making under uncertainty where the robot must account for uncertainty in sensor measurements, localization, action execution, as well as many other factors. For large-scale exploration applications, autonomous systems...
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Zusammenfassung: | Robotic exploration of unknown environments is fundamentally a problem of
decision making under uncertainty where the robot must account for uncertainty
in sensor measurements, localization, action execution, as well as many other
factors. For large-scale exploration applications, autonomous systems must
overcome the challenges of sequentially deciding which areas of the environment
are valuable to explore while safely evaluating the risks associated with
obstacles and hazardous terrain. In this work, we propose a risk-aware
meta-level decision making framework to balance the tradeoffs associated with
local and global exploration. Meta-level decision making builds upon classical
hierarchical coverage planners by switching between local and global policies
with the overall objective of selecting the policy that is most likely to
maximize reward in a stochastic environment. We use information about the
environment history, traversability risk, and kinodynamic constraints to reason
about the probability of successful policy execution to switch between local
and global policies. We have validated our solution in both simulation and on a
variety of large-scale real world hardware tests. Our results show that by
balancing local and global exploration we are able to significantly explore
large-scale environments more efficiently. |
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DOI: | 10.48550/arxiv.2209.05580 |