Active Sensing Strategy: Multi-Modal, Multi-Robot Source Localization and Mapping in Real-World Settings with Fixed One-Way Switching
Vu Phi Tran, Asanka G. Perera, Matthew A. Garratt, Kathryn Kasmarik,, Sreenatha G. Anavatti

TL;DR
This paper presents a multi-modal, multi-robot active sensing strategy for gas source localization that combines exploration and precise mapping phases, improving speed and accuracy in real-world, cluttered environments.
Contribution
It introduces a novel state-machine based approach with fixed one-way switching between exploration and active sensing phases for enhanced environmental mapping.
Findings
43% reduction in turnaround time
50% increase in estimation accuracy
Improved robustness in cluttered environments
Abstract
This paper introduces a state-machine model for a multi-modal, multi-robot environmental sensing algorithm tailored to dynamic real-world settings. The algorithm uniquely combines two exploration strategies for gas source localization and mapping: (1) an initial exploration phase using multi-robot coverage path planning with variable formations for early gas field indication; and (2) a subsequent active sensing phase employing multi-robot swarms for precise field estimation. The state machine governs the transition between these two phases. During exploration, a coverage path maximizes the visited area while measuring gas concentration and estimating the initial gas field at predefined sample times. In the active sensing phase, mobile robots in a swarm collaborate to select the next measurement point, ensuring coordinated and efficient sensing. System validation involves…
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Taxonomy
TopicsModular Robots and Swarm Intelligence · Robotics and Sensor-Based Localization
