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Representative Small UAS Trajectories for Encounter Modeling

机译:代表性UAS小轨迹遇到模型

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As unmanned aircraft systems (UASs) continue to integrate into the U.S. National Airspace System (NAS), there is a need to quantify the risk of airborne collisions between unmanned and manned aircraft to support regulation and standards development. Both regulators and standards developing organizations have made extensive use of Monte Carlo collision risk analysis simulations using probabilistic models of aircraft flight. We have previously demonstrated a methodology for developing small unmanned aircraft system (sUAS) flight models that leverage open source geospatial information and map datasets to generate representative unmanned operations at low altitudes. This work expands upon previous research by evaluating the scalability and diversity of open source data to support currently needed risk assessments. We also provide considerations for pairing these trajectories with generative manned aircraft models to create encounters for Monte Carlo simulations.
机译:随着无人驾驶飞机系统(UAS)继续集成到美国国家空域系统(NAS)中,有必要对无人驾驶飞机和有人驾驶飞机之间发生空中碰撞的风险进行量化,以支持法规和标准制定。监管机构和标准制定组织都已广泛使用通过飞机飞行概率模型进行的蒙特卡洛碰撞风险分析模拟。之前,我们已经演示了一种开发小型无人机系统(sUAS)飞行模型的方法,该模型利用开源地理空间信息和地图数据集在低空产生代表性的无人机操作。这项工作通过评估开源数据的可伸缩性和多样性来支持当前所需的风险评估,从而扩展了先前的研究。我们还将考虑将这些轨迹与生成型载人飞机模型配对以创建蒙特卡洛模拟的机会。

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