A Versatile Multi-Robot Monte Carlo Tree Search Planner for On-Line Coverage Path Planning
Mobile robots hold great promise in reducing the need for humans to perform jobs such as vacuuming, seeding,harvesting, painting, search and rescue, and inspection. In practice, these tasks must often be done without an exact map of the area and could be completed more quickly through the use of mul...
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| Main Authors | , , |
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| Format | Journal Article |
| Language | English |
| Published |
11.02.2020
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| Subjects | |
| Online Access | Get full text |
| DOI | 10.48550/arxiv.2002.04517 |
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| Summary: | Mobile robots hold great promise in reducing the need for humans to perform
jobs such as vacuuming, seeding,harvesting, painting, search and rescue, and
inspection. In practice, these tasks must often be done without an exact map of
the area and could be completed more quickly through the use of multiple robots
working together. The task of simultaneously covering and mapping an area with
multiple robots is known as multi-robot on-line coverage and is a growing area
of research. Many multi-robot on-line coverage path planning algorithms have
been developed as extensions of well established off-line coverage algorithms.
In this work we introduce a novel approach to multi-robot on-line coverage path
planning based on a method borrowed from game theory and machine learning-
Monte Carlo Tree Search. We implement a Monte Carlo Tree Search planner and
compare completion times against a Boustrophedon-based on-line multi-robot
planner. The MCTS planner is shown to perform on par with the conventional
Boustrophedon algorithm in simulations varying the number of robots and the
density of obstacles in the map. The versatility of the MCTS planner is
demonstrated by incorporating secondary objectives such as turn minimization
while performing the same coverage task. The versatility of the MCTS planner
suggests it is well suited to many multi-objective tasks that arise in mobile
robotics. |
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| DOI: | 10.48550/arxiv.2002.04517 |