确保国家领空内自主商用无人机的可靠性

Matthew Litton, D. Drusinsky, J. B. Michael
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引用次数: 0

摘要

无人驾驶飞行器(又称无人机)的激增引发了人们对其与传统飞机安全可靠整合的担忧。如今,无人机已在基础设施检测、农业和物流等广泛领域得到商业应用,因此有必要将其进一步融入空域生态系统。空域管理目前依赖于人类操作员来执行冲突消除和应急管理,但人类操作员的撤离要求无人机具备自主决策能力,以便实时解决冲突和检测碰撞。我们分析了美国军方开发的检测与避让算法的数据,展示了自动学习轻量级有效碰撞检测模型的能力。然后,我们讨论了如何以简便、廉价的方式开发此类模型,并将其部署在无人机上,作为自主探测与避让系统的一部分。这种系统可以向监管机构和其他利益相关者保证无人机可靠地融入国家空域系统。(本研究由美国海军部赞助)。
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Assuring Reliability of Autonomous Commercial Drones in the National Airspace
The proliferation of uncrewed aerial vehicles, also known as drones, raises concerns about their safe and reliable integration with conventional aircraft. Today, drones are used commercially for wide-ranging applications such as infrastructure inspection, agriculture, and logistics, necessitating their further integration into the airspace ecosystem. Airspace management currently depends on human operators to perform deconfliction and emergency management, but the removal of human operators requires drones to possess autonomous decision-making capabilities for real-time conflict resolution and collision detection. We analyze data from U.S. military-developed detect-and-avoid algorithms to demonstrate the ability to automatically learn lightweight and effective models of collision detection. Then, we discuss how such models can be easily and cheaply developed for deployment on drones as part of autonomous detect-and-avoid systems. Such systems can provide assurances to regulators and other stakeholders about the reliable integration of drones into the national airspace system. (This research is sponsored by the U.S. Department of the Navy.)
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