C4ISR Software Department, PIT-RADWAR, 04-051 Warsaw, Poland.
Faculty of Cybernetics, Military University of Technology, 00-908 Warsaw, Poland.
Sensors (Basel). 2020 Oct 8;20(19):5712. doi: 10.3390/s20195712.
The paper presents the concept of planning the optimal trajectory of fixed-wing unmanned aerial vehicle (UAV) of a short-range tactical class, whose task is to recognize a set of ground objects as a part of a reconnaissance mission. Tasks carried out by such systems are mainly associated with an aerial reconnaissance using Electro-Optical/Infrared (EO/IR) systems and Synthetic Aperture Radars (SARs) to support military operations. Execution of a professional reconnaissance of the indicated objects requires determining the UAV flight trajectory in the close neighborhood of the target, in order to collect as much interesting information as possible. The paper describes the algorithm for determining UAV flight trajectories, which is tasked with identifying the indicated objectives using the sensors specified in the order. The presence of UAV threatening objects is taken into account. The task of determining the UAV flight trajectory for recognition of the target is a component of the planning process of the tactical class UAV mission, which is also presented in the article. The problem of determining the optimal UAV trajectory has been decomposed into several subproblems: determining the reconnaissance flight method in the vicinity of the currently recognized target depending on the sensor used and the required parameters of the recognition product (photo, film, or SAR scan), determining the initial possible flight trajectory that takes into account potential UAV threats, and planning detailed flight trajectory considering the parameters of the air platform based on the maneuver planning algorithm designed for tactical class platforms. UAV route planning algorithms with time constraints imposed on the implementation of individual tasks were used to solve the task of determining UAV flight trajectories. The problem was formulated in the form of a Mixed Integer Linear Problem (MILP) model. For determining the flight path in the neighborhood of the target, the optimal control algorithm was also presented in the form of a MILP model. The determined trajectory is then corrected based on the construction algorithm for determining real UAV flight segments based on Dubin curves.
本文提出了规划近程战术级固定翼无人机(UAV)最优轨迹的概念,其任务是识别一组地面目标,作为侦察任务的一部分。此类系统执行的任务主要与使用光电/红外(EO/IR)系统和合成孔径雷达(SAR)进行空中侦察有关,以支持军事行动。执行对所指示目标的专业侦察需要确定无人机在目标附近的飞行轨迹,以便尽可能多地收集感兴趣的信息。本文描述了确定无人机飞行轨迹的算法,该算法的任务是使用订单中指定的传感器识别所指示的目标。考虑到了无人机威胁目标的存在。确定用于识别目标的无人机飞行轨迹的任务是战术级无人机任务规划过程的一个组成部分,本文也对此进行了介绍。确定最优无人机轨迹的问题已分解为几个子问题:根据所使用的传感器和所需的识别产品参数(照片、胶卷或 SAR 扫描)确定在当前识别目标附近进行侦察飞行的方法,确定考虑到潜在无人机威胁的初始可能飞行轨迹,以及根据为战术级平台设计的机动规划算法,考虑到空中平台的参数,规划详细的飞行轨迹。使用了受个别任务执行时间限制的无人机路线规划算法来解决确定无人机飞行轨迹的任务。该问题被表述为混合整数线性问题(MILP)模型。为了确定目标附近的飞行路径,还以 MILP 模型的形式提出了最优控制算法。然后根据基于杜宾曲线确定真实无人机飞行段的确定算法来修正确定的轨迹。