Autonomous UAV object Avoidance with Floyd-warshall differential evolution approach

Guruprasad Yk, N. NageswaragupthaM.
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Abstract

Unmanned Aerial Vehicles (UAVs) are recently focused with significant research attention from commercial to military industries. Due to its wide range of applications such as traffic monitoring, surveillance, aerial photograph and rescue mission, many research studies were conducted related to UAV development. UAV are commonly called as ‘drones’ used to suit dull, dangerous and dirty missions that can be suited by manned aircraft. UAV can be controlled either remotely or using automation approaches so that it can be travelled into predefined path. To make the autonomous UAV, the most complex issue that is faced by UAV is obstacle / object avoidance. Obstacle detection and avoidance are important for UAV and it is the complex problem to solve due to the payload restriction. This will limit the sensor count mounted on the vehicle. Radar was used to find the distance between the object and vehicle. This can help to detect and track the moving objects speed and direction towards the vehicle. This paper considered the object avoidance problem as path planning problem. There were many path planning methods related to UAV which formulates the path planning as an optimization problem to avoid the obstacles. With the consideration, this paper proposed an efficient and optimal approach called Floyd Warshall- Differential evolution (FWDE) approach to detect the frontal obstacles of UAV. Finally, statistical analysis of the simulated environment reveals that the proposed evolutionary method can efficiently avoid both static and dynamic objects for UAVs. This efficient avoidance algorithm for UAV can be experimented with simulation environment with three kinds of scenarios having different number of cells. The obtained accuracy and recall value of the proposed system is 95.21% and 91.56%.
基于Floyd-warshall差分进化方法的自主无人机目标回避
近年来,从商业到军事工业,无人驾驶飞行器(uav)的研究受到了广泛关注。由于其广泛的应用,如交通监控,监视,航空摄影和救援任务,进行了许多与无人机发展相关的研究。UAV通常被称为“无人驾驶飞机”,用于适合载人飞机的沉闷,危险和肮脏的任务。UAV可以远程控制或使用自动化方法,因此它可以进入预定的路径。为了实现无人机的自主,无人机面临的最复杂的问题是避障问题。障碍物检测与避障是无人机的一个重要问题,但由于载荷的限制,这一问题的解决十分复杂。这将限制安装在车辆上的传感器数量。雷达被用来确定物体和车辆之间的距离。这可以帮助检测和跟踪移动物体的速度和方向。本文将目标回避问题视为路径规划问题。与无人机相关的路径规划方法有很多,它们都将路径规划表述为避障的优化问题。在此基础上,提出了一种高效、最优的无人机前方障碍物检测方法——Floyd Warshall- Differential evolution (FWDE)方法。最后,仿真环境的统计分析表明,所提出的进化方法可以有效地避免无人机的静态和动态目标。该算法可以在具有不同单元数的三种场景的仿真环境中进行实验。系统的准确率和召回率分别为95.21%和91.56%。
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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