Right Place, Right Time: Proactive Multi-Robot Task Allocation Under Spatiotemporal Uncertainty

Charlie Street, Bruno Lacerda, Manuel Mühlig, Nick Hawes

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Abstract

For many multi-robot problems, tasks are announced during execution, where task announcement times and locations are uncertain. To synthesise multi-robot behaviour that is robust to early announcements and unexpected delays, multi-robot task allocation methods must explicitly model the stochastic processes that govern task announcement. In this paper, we model task announcement using continuous-time Markov chains which predict when and where tasks will be announced. We then present a task allocation framework which uses the continuous-time Markov chains to allocate tasks proactively, such that robots are near or at the task location upon its announcement. Our method seeks to minimise the expected total waiting duration for each task, i.e. the duration between task announcement and a robot beginning to service the task. Our framework can be applied to any multi-robot task allocation problem where robots complete spatiotemporal tasks which are announced stochastically. We demonstrate the efficacy of our approach in simulation, where we outperform baselines which do not allocate tasks proactively, or do not fully exploit our task announcement models.
Original languageEnglish
Pages (from-to)137-171
Number of pages35
JournalJournal of Artificial Intelligence Research
Volume79
DOIs
Publication statusPublished - 11 Jan 2024

Bibliographical note

Acknowledgments:
This work is supported by the Honda Research Institute Europe GmbH, UK Research and Innovation and EPSRC through the Robotics and Artificial Intelligence for Nuclear (RAIN) hub [EP/R026084/1], the EPSRC Programme Grant ‘From Sensing to Collaboration’ [EP/V000748/1], and a gift from Amazon Web Services.

Keywords

  • multiagent systems
  • robotics
  • uncertainty
  • scheduling

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