Towards Efficient Gas Leak Detection in Built Environments: Data-Driven Plume Modeling for Gas Sensing Robots

Wanting Jin, F. Rahbar, Chiara Ercolani, A. Martinoli
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Abstract

The deployment of robots for Gas Source Localization (GSL) tasks in hazardous scenarios significantly reduces the risk to humans and animals. Gas sensing using mobile robots focuses primarily on simplified scenarios, due to the complexity of gas dispersion, with a current trend towards tackling more complex environments. However, most state-of-art GSL algorithms for environments with obstacles only depend on local information, leading to low efficiency in large and more structured spaces. The efficiency of GSL can be improved dramatically by coupling it with a global knowledge of gas distribution in the environment. However, since gas dispersion in a built environment is difficult to model analytically, most previous work incorporating a gas dispersion model was tested under simplified assumptions, which do not take into consideration the impact of the presence of obstacles to the airflow and gas plume. In this paper, we propose a probabilistic algorithm that enables a robot to efficiently localize gas sources in built environments, by combining a state-of-the-art probabilistic GSL algorithm, Source Term Estimation (STE) with a learned plume model. The pipeline of generating gas dispersion datasets from realistic simulations, the training and validation of the model, as well as the integration of the learned model with the STE framework are presented. The performance of the algorithm is validated both in high-fidelity simulations and real experiments, with promising results obtained under various obstacle configurations.
在建筑环境中实现高效气体泄漏检测:气体传感机器人的数据驱动羽流建模
在危险环境中部署机器人进行气源定位(GSL)任务,大大降低了人类和动物的风险。由于气体分散的复杂性,使用移动机器人的气体传感主要侧重于简化场景,目前的趋势是解决更复杂的环境。然而,大多数最先进的GSL算法仅依赖于局部信息,导致在大型和更结构化的空间中效率较低。通过将GSL与全球环境中气体分布的知识相结合,可以显著提高GSL的效率。然而,由于建筑环境中的气体弥散很难进行解析建模,因此,之前的大多数纳入气体弥散模型的工作都是在简化的假设下进行测试的,这些假设没有考虑障碍物对气流和气体羽流的影响。在本文中,我们提出了一种概率算法,通过结合最先进的概率GSL算法,源项估计(STE)和学习羽流模型,使机器人能够有效地定位建筑环境中的气源。给出了从真实仿真中生成气体分散数据集的方法、模型的训练和验证以及学习到的模型与STE框架的集成。通过高保真仿真和实际实验验证了该算法的性能,在各种障碍物配置下均取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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