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SniffySquad: Patchiness-Aware Gas Source Localization with Multi-Robot Collaboration

9 November 2024
Yuhan Cheng
Xuecheng Chen
Yixuan Yang
Haoyang Wang
J. Xu
Chaopeng Hong
Susu Xu
Xiao-Ping Zhang
Yunhao Liu
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Abstract

Gas source localization is pivotal for the rapid mitigation of gas leakage disasters, where mobile robots emerge as a promising solution. However, existing methods predominantly schedule robots' movements based on reactive stimuli or simplified gas plume models. These approaches typically excel in idealized, simulated environments but fall short in real-world gas environments characterized by their patchy distribution. In this work, we introduce SniffySquad, a multi-robot olfaction-based system designed to address the inherent patchiness in gas source localization. SniffySquad incorporates a patchiness-aware active sensing approach that enhances the quality of data collection and estimation. Moreover, it features an innovative collaborative role adaptation strategy to boost the efficiency of source-seeking endeavors. Extensive evaluations demonstrate that our system achieves an increase in the success rate by 20%+20\%+20%+ and an improvement in path efficiency by 30%+30\%+30%+, outperforming state-of-the-art gas source localization solutions.

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@article{cheng2025_2411.06121,
  title={ SniffySquad: Patchiness-Aware Gas Source Localization with Multi-Robot Collaboration },
  author={ Yuhan Cheng and Xuecheng Chen and Yixuan Yang and Haoyang Wang and Jingao Xu and Chaopeng Hong and Xiao-Ping Zhang and Yunhao Liu and Xinlei Chen },
  journal={arXiv preprint arXiv:2411.06121},
  year={ 2025 }
}
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