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An intelligent algorithm for autonomous scientific sampling with the VALKYRIE cryobot

机译:valkyrie Cryobot自主科学抽样的智能算法

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The development of algorithms for agile science and autonomous exploration has been pursued in contexts ranging from spacecraft to planetary rovers to unmanned aerial vehicles to autonomous underwater vehicles. In situations where time, mission resources and communications are limited and the future state of the operating environment is unknown, the capability of a vehicle to dynamically respond to changing circumstances without human guidance can substantially improve science return. Such capabilities are difficult to achieve in practice, however, because they require intelligent reasoning to utilize limited resources in an inherently uncertain environment. Here we discuss the development, characterization and field performance of two algorithms for autonomously collecting water samples on VALKYRIE (Very deep Autonomous Laser-powered Kilowatt-class Yo-yoing Robotic Ice Explorer), a glacier-penetrating cryobot deployed to the Matanuska Glacier, Alaska (Mission Control location: 61°42′09.3″N 147°37′23.2″W). We show performance on par with human performance across a wide range of mission morphologies using simulated mission data, and demonstrate the effectiveness of the algorithms at autonomously collecting samples with high relative cell concentration during field operation. The development of such algorithms will help enable autonomous science operations in environments where constant real-time human supervision is impractical, such as penetration of ice sheets on Earth and high-priority planetary science targets like Europa.
机译:从航天器到行星贩卖到无人空中车辆到自主水下车辆的背景下,在语境上追求了敏捷科学和自治勘探算法的发展。在时间,使命资源和通信有限的情况下,未来操作环境未知的情况下,车辆动态地应对没有人类指导的不断变化的情况的能力可以大大提高科学返回。然而,这种能力难以在实践中实现,因为它们需要智能推理在固有的不确定环境中利用有限的资源。在这里,我们对VALKYRIE(非常深自治激光供电千瓦级溜溜yoing机器人冰资源管理器)自动采集水样讨论的两种算法的开发,鉴定和场上表现,冰川穿透cryobot部署到马塔努斯卡冰川,阿拉斯加(任务控制位置:61°42'09.3“N 147°37'23.2”w)。我们在使用模拟任务数据的各种任务形态方面表现出对人类性能的表现,并证明在现场操作期间具有高相对电池浓度的自主收集样品的算法的有效性。这种算法的发展将有助于在恒定的实时人类监督不切实际的环境中实现自主科学行动,例如地球上的冰盖和高优先行星科学目标的渗透。

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