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Mixed Observable RRT: Multi-Agent Mission-Planning in Partially Observable Environments

Kasper Johansson, Ugo Rosolia, Wyatt Ubellacker, Andrew Singletary, Aaron Ames

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Abstract

This paper considers centralized mission-planning for a heterogeneous multi-agent system with the aim of locating a hidden target. We propose a mixed observable setting, consist- ing of a fully observable state-space and a partially observable environment, using a hidden Markov model. First, we construct rapidly exploring random trees (RRTs) to introduce the mixed observable RRT for finding plausible mission plans giving way- points for each agent. Leveraging this construction, we present a path-selection strategy based on a dynamic programming approach, which accounts for the uncertainty from partial observations and minimizes the expected cost. Finally, we combine the high-level plan with model predictive control algorithms to evaluate the approach on an experimental setup consisting of a quadruped robot and a drone. It is shown that agents are able to make intelligent decisions to explore the area efficiently and locate the target through collaborative actions.

Index terms

Path Planning for Multiple Mobile Robots or Agents Planning under Uncertainty Multi-Robot Systems