城市空域小型无人机和UAM交通的故障安全、故障安全实验

Sam Siewert, K. Sampigethaya, Jonathan M. Buchholz, Steve Rizor
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引用次数: 9

摘要

十年内,数以百万计的小型无人机系统(sUAS)或重量小于55磅的无人机将在城市空域飞行。这是除了增加城市空中交通(UAM)的目标之外:更大的运输无人机和有人驾驶的飞行器,包括空中出租车服务和创新的航空设计,以彻底改变运输。一个重要的问题是缺乏现有的管理系统来应对这种巨大的空中交通,由不同形状、尺寸和机载设备能力组成的无人机,在以前通用航空(GA)未占用的空间中与较大的UAM车辆相邻飞行。由于不发射、不合作无人机等城市因素,共享UAM空域的sUAS的鲁棒性和弹性检测、识别、定位和跟踪变得复杂。全球定位系统(GPS)、广播自动相关监视(ADS-B)和惯性导航系统(INS)目前的技术限制和漏洞加剧了这些挑战,可能构成安全和安保威胁。为了简化安全可靠的sUAS-UAM共享空域的愿景,我们提出了无人机网络,这是一个由多模式地面和飞行仪器组成的无人机交通管理(UTM)网络。无人机网络是一种架构,融合了被动视觉和声学传感器节点网络,以及用于UTM的主动无线电探测和测距(雷达)和光探测和测距(激光雷达)传感方法,旨在与现有的空中交通管制(ATC)和未来的UAM系统集成。无人机网络系统的目的是评估在城市无人机操作区域(如不受控制的g类空域和豁免授予的d类空域)联网的光电/红外(EO/IR)和声学阵列的使用。无人机网络方法结合了来自雷达、ADS-B和EO/IR的检测、跟踪和定位估计,使得该设计对传感器错误、样本丢失、欺骗或其他类型的攻击具有鲁棒性。系统实验设计允许在我们的飞行平台上模拟损坏的ADS-B、GPS和INS数据,包括与地面雷达和EO/IR通信的能力,以从飞行仪表的主要和次要故障中恢复,从而使无人机网络合作无人机可以设计为故障安全和故障安全。我们假设,如下图所示,屋顶传感器的Drone Net网络基于自定位与来自地面传感器网络的备份和确认数据的结合,提供了这种概念化的故障安全特性。此外,通过地面系统传感器融合以及UTM飞行计划和注册信息融合,整个系统可以比单独使用ADS-B等单一模式更安全地管理既符合GA又不符合UAM的小型无人机。为了验证我们的假设,我们设想今年进行两个实验。首先,测试确认我们可以模拟ADS-B, GPS和INS传感器数据损坏,导致使用备份飞行(激光雷达,EO/IR)或地面(雷达,EO/IR)数据恢复,以安全降落ALTA6或其他测试无人机。其次,在我们的测试无人机和系留空中障碍物之间进行一系列感知与避免(SAA)实验。未来,我们将利用这一经验,采用故障安全、故障保护方法和软件,在多个无人机之间进一步测试更高级的场景。无人机网络仪器在局部区域以及区域和更全球的基于云的网络将允许异构信息融合和算法开发,用于多传感器无人机检测、分类和识别,比单一数据库或传感器系统更准确。无人机网络项目的潜在力量在于其开放式设计的地面和飞行传感器网络,具有数据共享能力,可以随着时间的推移改进数据挖掘和机器学习,用于分析和安全应用。无人机网络的更具体应用包括UTM与ATC和UAM的集成,以及校园和公共场所的空域安全和安保。在此,我们将展示我们的实验设计和来自安柏瑞德航空大学与科罗拉多大学博尔德分校合作的当前测试数据,以完成地面和飞行仪器的开放规范。我们还想邀请其他人参与发展网络,并为UTM、UAM和GA共享空域研究提供数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fail-Safe, Fail-Secure Experiments for Small UAS and UAM Traffic in Urban Airspace
Millions of small Unmanned Aerial Systems (sUAS), or drones weighing less than 55 pounds, will fly in urban airspaces within a decade. This is in addition to goals for increased Urban Air Mobility (UAM): larger transportation UAS and piloted air vehicles, including air taxi service and innovative aviation designs to revolutionize transportation. A significant problem is the lack of current management systems for this extremely large volume of air traffic, composed of heterogeneous drone shapes, sizes, and onboard equipment capabilities, flying adjacent to larger UAM vehicles in spaces previously unoccupied by General Aviation (GA). Robust and resilient detection, identification, localization, and tracking of sUAS sharing UAM airspace is complicated by urban factors such as non-transmitting, non-cooperative drones. Exacerbating these challenges, current technological limitations and vulnerabilities in Global Positioning System (GPS), Automatic Dependent Surveillance-Broadcast (ADS-B), and Inertial Navigation Systems (INS) can pose safety and security threats. To streamline a vision of safe and secure sUAS-UAM shared airspace, we propose Drone Net, a UAS Traffic Management (UTM) network of multi-modal ground and flight instruments. Drone Net is an architecture fusing a network of passive visual and acoustic sensor nodes with active Radio Detection and Ranging (radar) and Light Detection and Ranging (lidar) sensing methods for UTM, designed for integration with existing Air Traffic Control (ATC) and future UAM systems. The purpose of the Drone Net system is to evaluate use of Electro-Optical/Infrared (EO/IR) and acoustic arrays networked within an urban UAS operating region such as uncontrolled Class-G and waiver-granted Class-D airspace. The Drone Net approach combines detection, tracking, and localization estimation from radar, ADS-B, and EO/IR such that the design is robust to sensor errors, sample loss, and spoofing or other types of attacks. The system experimental design allows for emulation of corrupted ADS-B, GPS, and INS data on our flight platform including capability to communicate with ground radar and EO/IR to recover from flight instrument major and minor malfunctions such that a Drone Net cooperative UAS can be engineered to be fail-safe and fail-secure. We hypothesize that the Drone Net network of rooftop sensors, shown below, provides this conceptualized fail-safe, fail-secure property based upon the combination of self-localization with backup and confirming data from the ground sensor network. Further, with ground-system sensor fusion as well as UTM flight plan and registration information fusion, the overall system can manage small UAS that are both compliant and non-compliant alongside GA and UAM more safely than a single mode like ADS-B alone. To test our hypothesis, we envision two experiments this year. First, a test to confirm that we can emulate ADS-B, GPS, and INS sensor data corruption, leading to recovery using backup flight (lidar, EO/IR) or ground (radar, EO/IR) data to safely land an ALTA6 or other test UAS. Second, a series of Sense-and-Avoid (SAA) experiments between our test UAS and a tethered aerial obstacle. In the future, we will use this experience with fail-safe, fail-secure methods and software to further test more advanced scenarios between multiple UAS. The network of Drone Net instruments in a local area as well as regional and more global cloud-based networks will allow for heterogeneous information fusion and algorithm development for multi-sensor drone detection, classification, and identification with more accuracy than a single database or sensor system. The latent power of the Drone Net project is in its open-design ground and flight sensor network with data sharing capability to improve data mining and machine learning over time for analysis and security applications. More concrete applications for Drone Net include UTM integration with ATC and UAM, but also airspace safety and security for campus and public venues in general. Herein, we will present our experimental design and current test data from Embry-Riddle Aeronautical University in collaboration with University of Colorado Boulder toward completing the open specification for ground and flight instruments. We would additionally like to invite others to participate in growing the network and the data available for UTM, UAM, and GA shared airspace research.
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