Coverage Path Planning with Budget Constraints for Multiple Unmanned Ground Vehicles
Tran, Vu Phi, Perera, Asanka, Garratt, Matthew A., Kasmarik, Kathryn, Anavatti, Sreenatha
–arXiv.org Artificial Intelligence
This paper proposes a state-machine model for a multi-modal, multi-robot environmental sensing algorithm. This multi-modal algorithm integrates two different exploration algorithms: (1) coverage path planning using variable formations and (2) collaborative active sensing using multi-robot swarms. The state machine provides the logic for when to switch between these different sensing algorithms. We evaluate the performance of the proposed approach on a gas source localisation and mapping task. We use hardware-in-the-loop experiments and real-time experiments with a radio source simulating a real gas field. We compare the proposed approach with a single-mode, state-of-the-art collaborative active sensing approach. Our results indicate that our multi-modal switching approach can converge more rapidly than single-mode active sensing.
arXiv.org Artificial Intelligence
Jun-6-2023
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