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Bringing Mobile Robot Olfaction to the next dimension — UAV-based remote sensing of gas clouds and source localization

机译:将移动机器人嗅觉推向新的高度-基于UAV的气云遥感和气源定位

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This paper introduces a novel robotic platform for aerial remote gas sensing. Spectroscopic measurement methods for remote sensing of selected gases lend themselves for use on mini-copters, which offer a number of advantages for inspection and surveillance. No direct contact with the target gas is needed and thus the influence of the aerial platform on the measured gas plume can be kept to a minimum. This allows to overcome one of the major issues with gas-sensitive mini-copters. On the other hand, remote gas sensors, most prominently Tunable Diode Laser Absorption Spectroscopy (TDLAS) sensors have been too bulky given the payload and energy restrictions of mini-copters. Here, we introduce and present the Unmanned Aerial Vehicle for Remote Gas Sensing (UAV-REGAS), which combines a novel lightweight TDLAS sensor with a 3-axis aerial stabilization gimbal for aiming on a versatile hexacopter. The proposed system can be deployed in scenarios that cannot be addressed by currently available robots and thus constitutes a significant step forward for the field of Mobile Robot Olfaction (MRO). It enables tomographic reconstruction of gas plumes and a localization of gas sources. We also present first results showing the gas sensing and aiming capabilities under realistic conditions.
机译:本文介绍了一种用于空中遥测气体传感的新型机器人平台。用于遥感选定气体的光谱测量方法适合用于小型直升机,这为检查和监视提供了许多优势。不需要与目标气体直接接触,因此可以将高空作业平台对被测气体羽流的影响保持在最低水平。这样可以克服对气体敏感的小型直升机的主要问题之一。另一方面,考虑到微型直升机的有效载荷和能量限制,远程气体传感器,尤其是可调谐二极管激光吸收光谱(TDLAS)传感器,体积太大。在这里,我们介绍并介绍一种用于远程气体传感的无人机(UAV-REGAS),该无人机将新型的轻型TDLAS传感器与3轴空中稳定云台结合在一起,以瞄准多功能六轴飞行器。所提出的系统可以部署在当前可用的机器人无法解决的场景中,因此构成了移动机器人嗅探(MRO)领域的重要一步。它可以对气体羽流进行层析成像重建并确定气源的位置。我们还提供了初步结果,显示了在实际条件下的气体感应和瞄准能力。

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