小型激光雷达和雷达传感器的飞行测试评估,用于sUAS探测和避免应用

M. U. de Haag, C. Bartone, M. Braasch
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引用次数: 32

摘要

尽管经过了十多年的深入研究和开发,但对于中型和大型无人机系统(UAS)来说,探测和避免(DAA)技术仍然处于不成熟的状态,对于小型无人机系统(sUAS)来说,它还处于起步阶段。常规的超视距(BVLOS)操作将无法实现,直到这一技术僵局被打破。虽然已知多系统/多传感器方法是稳健的解决方案,但sUAS平台除了为商业应用提供创收有效载荷外,还面临着承载此类设备套件的挑战。小型激光雷达和雷达传感器的最新发展可能是sUAS整体DAA解决方案的重要组成部分。这些类型的传感器主要是为自主地面车辆市场开发的,但也可能适用于无人机应用。本文记录了一系列的地面和飞行测试,以评估小型激光雷达和雷达传感器的性能。在静态和动态飞行模式下,确定了传感器的障碍物探测距离与障碍物大小的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flight-test evaluation of small form-factor LiDAR and radar sensors for sUAS detect-and-avoid applications
Despite well over a decade of intensive research and development efforts, detect-and-avoid (DAA) technology remains in an immature state for medium and large unmanned aerial systems (UAS) and is in its very infancy for small UAS (sUAS). Routine Beyond Visual Line-of-Sight (BVLOS) operations will not be achieved until this technological impasse has been surpassed. Although a multi-system/multi-sensor approach is known to be the robust solution, sUAS platforms are challenged to host such an equipment suite in addition to their revenue-generating payload for commercial applications. Recent developments in small form-factor LiDAR and radar sensors may prove to be vital components in the overall DAA solution for sUAS. These types of sensors are being developed primarily for the autonomous ground vehicle market, but may be adapted for UAS applications. This paper documents a series of ground and flight tests conducted to evaluate the performance of both a small form-factor LiDAR and radar sensors. Obstacle detection range versus obstacle size is determined for both sensors in static and dynamic flight modes.
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