Predicting sUAS conflicts in the national airspace with interacting multiple models and Haversine-based conflict detection system

James Z. Wells, Manish Kumar
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Abstract

In this paper, a conflict detection system for small Unmanned Aerial Vehicles (sUAS), composed of an interacting multiple model state predictor and a Haversine-distance based conflict detector, is proposed. The conflict detection system was developed and tested via a random recursive simulation in the ROS-Gazebo physics engine environment. The simulation consisted of ten small unmanned aerial vehicles flying along randomly assigned way-point navigation missions within a confined airspace. Way-points are generated from a uniform distribution and then sent to each vehicle. The interacting multiple model state predictor runs on a ground-based system and only has access to current vehicle positional information. It does not have access to the future way-points of individual vehicles. The state predictor is based on Kalman filters that utilize constant velocity, constant acceleration, and constant turn models. It generates near-future position estimates for all vehicles operating within an airspace. These models are probabilistically fused together and projected into the near-future to generate state predictions. These state predictions are then passed to the Haversine distance-based conflict detection algorithm to compare state estimates and identify probable conflicts. The conflicts are detected and flagged based on tunable threshold values which compare distances between predictions for the vehicles operating within the airspace. This paper discusses the development of the random recursive simulation for the ROS-Gazebo framework and the derivation of the interacting multiple model along-with the Haversine-based future conflict detector. The results are presented via simulation to highlight mid-air conflict detection application for sUAS operations in the National Airspace.
基于交互多模型和haversine冲突检测系统的国家空域sUAS冲突预测
提出了一种由相互作用的多模型状态预测器和基于哈弗森距离的冲突检测器组成的小型无人机冲突检测系统。开发了冲突检测系统,并在ROS-Gazebo物理引擎环境下进行了随机递归仿真。该仿真由10架小型无人机组成,它们在限定空域内沿随机指定的航路点导航任务飞行。路径点由均匀分布生成,然后发送到每辆车。交互多模型状态预测器在地面系统上运行,只能访问当前车辆的位置信息。它无法访问单个车辆的未来路径点。状态预测器基于卡尔曼滤波器,利用恒定速度,恒定加速度和恒定转弯模型。它生成在一个空域内运行的所有车辆的近期位置估计。这些模型在概率上融合在一起,并投射到不久的将来,以生成状态预测。然后将这些状态预测传递给Haversine基于距离的冲突检测算法,以比较状态估计并识别可能的冲突。根据可调的阈值来检测和标记冲突,该阈值比较空域内运行车辆的预测距离。本文讨论了ROS-Gazebo框架随机递归仿真的发展、相互作用多重模型的推导以及基于haversine的未来冲突检测器。结果通过模拟展示,以突出在国家空域中sUAS作战的空中冲突检测应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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