Unmanned aerial vehicles (UAVs), commonly known as drones, are being increasingly deployed throughout the globe as a means to streamline monitoring, inspection, mapping, and logistic routines. When dispatched on autonomous missions, drones require an intelligent decision-making system for trajectory planning and tour optimization. Given the limited capacity of their onboard batteries, a key design challenge is to ensure the underlying algorithms can efficiently optimize the mission objectives along with recharging operations during long-haul flights. With this in view, the present work undertakes a comprehensive study on automated tour management systems for an energy-constrained drone: (1) We construct a machine learning model that estimates the energy expenditure of typical multi-rotor drones while accounting for real-world aspects and extrinsic meteorological factors. (2) Leveraging this model, the joint program of flight mission planning and recharging optimization is formulated as a multi-criteria Asymmetric Traveling Salesman Problem (ATSP), wherein a drone seeks for the time-optimal energy-feasible tour that visits all the target sites and refuels whenever necessary. (3) We devise an efficient approximation algorithm with provable worst-case performance guarantees and implement it in a drone management system, which supports real-time flight path tracking and re-computation in dynamic environments. (4) The effectiveness and practicality of the proposed approach are validated through extensive numerical simulations as well as real-world experiments.
翻译:无人驾驶航空飞行器(无人驾驶飞行器)通常称为无人驾驶飞机,正越来越多地在全球各地部署,作为精简监测、检查、制图和后勤例行工作的手段。无人驾驶飞机在自主特派团中部署时,需要有一个智能决策系统,以便进行轨迹规划和优化巡航。鉴于机上电池的能力有限,一个关键的设计挑战是确保基本算法能够有效地优化飞行任务目标,同时在长途飞行期间进行补给作业。鉴于此,目前的工作正在全面研究能源限制型无人驾驶飞机的自动巡航管理系统:(1) 我们建立一个机器学习模型,估计典型的多机器人无人驾驶飞机的能源支出,同时计及现实世界的各个方面和极端气象因素。 (2) 利用这一模型,制定飞行飞行任务规划和再装修的联合方案,作为多标准、计量旅行推销员问题。 无人驾驶飞机寻求在访问所有目标地点和必要时再加燃料的最理想的巡回旅行管理系统。 (3) 我们设计一个高效的近似算法,在真实的、最动态的飞行轨迹上进行最精确的飞行跟踪。