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An energy efficient IoD static and dynamic collision avoidance approach based on gradient optimization

机译:基于梯度优化的节能IOD静态和动态碰撞避免方法

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Internet of Drones (IoD) formation offers a wide variety of applications in military and civilian environments. In highly congested terrain, dynamic and static obstacles have a critical impact on IoD performance. One of the critical challenges in IoD missions is avoiding obstacles for successfully and safely completing their tasks. The limited flight time of a drone is another challenge. Thus, IoD has to be provided by an intelligent and accurate energy-efficient collision avoidance algorithm in which IoD paths are modified online to guarantee drones safety. This paper presents an energy-efficient strategy to avoid static and dynamic collisions with minimum energy required for drones to reach their destinations safely. We develop a novel algorithm to avoid multiple static and dynamic obstacles of different sizes within a limited detection range with energy consumption minimization. To do so, the gradient-based approach is utilized in the proposed algorithm for fast and quick convergence. Furthermore, the proposed algorithm allows drones to be in hovering or backtracking states; or they can fly vertically in other cases. More importantly, the results validate the efficiency and accuracy of the proposed algorithm in a dense environment that involves high collision risk with obstacle relative speed up to 10 meters/sec.
机译:无人机互联网(IOD)形成在军事和民用环境中提供各种各样的应用。在高度拥挤的地形中,动态和静态障碍对IOD性能产生了关键影响。 IOD任务中的一个关键挑战之一是避免成功和安全地完成任务的障碍。无人机的有限飞行时间是另一个挑战。因此,必须通过智能和准确的节能碰撞避免算法提供IOD,其中IOD路径在线修改以保证无智能安全性。本文介绍了节能策略,以避免静态和动态碰撞,无人机能够安全地到达目的地的最低能量。我们开发一种新颖的算法,以避免在有限的检测范围内具有不同尺寸的多种静态和动态障碍,其能耗最小化。为此,基于梯度的方法用于快速和快速收敛的所提出的算法。此外,所提出的算法允许无人机悬停或回溯状态;或者它们可以在其他情况下垂直飞行。更重要的是,结果验证了致密环境中所提出的算法的效率和准确性,涉及高达10米/秒的障碍物的高碰撞风险。

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