Low-altitude urban flight planning for small Unmanned Aircraft Systems (UAS) requires accurate vehicle, environment maps, and risk models to assure flight plans consider the urban landscape as well as airspace constraints. This paper presents a suite of motion planning metrics designed for small UAS urban flight. We define map-based and path-based metrics to holistically characterize motion plan quality. Proposed metrics are examined in the context of representative geometric, graph-based, and sampling-based motion planners applied to a multicopter small UAS. A novel multi-objective heuristic is proposed and applied for graph-based and sampling motion planners at four urban UAS flight altitude layers. Monte Carlo case studies in a New York City urban environment illustrate metric map properties and planner performance. Motion plans are evaluated as a function of planning algorithm, location, range, and flight altitude.
翻译:小型无人驾驶航空器系统(无人驾驶航空器系统)低纬度城市飞行规划需要精确的车辆、环境地图和风险模型,以确保飞行计划考虑到城市景观和空气空间限制,本文件介绍了一套为小型无人驾驶航空器城市飞行设计的机动规划指标,我们界定了基于地图和基于路径的计量标准,以整体地描述运动计划的质量,在具有代表性的几何、基于图表和基于取样的机动规划人员对小型无人驾驶航空器系统适用的情况下,对拟议计量标准进行了审查。在四个城市无人驾驶航空器飞行高度层提出了新的多目标超常,并适用于基于图表的和抽样的机动规划人员。纽约市城市环境的蒙特卡洛案例研究说明了计量地图属性和规划人员的业绩。对移动计划的评价是规划算法、位置、距离和飞行高度的功能。