避障
计算机科学
群体行为
障碍物
避碰
计算机视觉
人工智能
移动机器人
计算机安全
机器人
地理
碰撞
考古
作者
Muhammad Abaidullah Anwar,Muhammad Awais Javed,Rizwan Ahmad,Waqas Ahmed,Muhammad Mahtab Alam
标识
DOI:10.1109/elecom63163.2024.10892180
摘要
The idea of a “digital twin” has become a ground-breaking technological innovation in recent years, allowing the virtualization of physical systems to bridge the gap between the real and digital worlds. Meanwhile, Unmanned Aerial Vehicles (UAVs) are becoming increasingly integral to daily life. However, UAVs face constraints that hinder their optimal performance, such as limited battery life and processing capacity. Unlike UAVs, Digital Twins do not suffer from these limitations. In this paper, we propose a concept where UA V swarms and Digital Twins coexist. Specifically, we focus on collision avoidance, a critical aspect for the UAV swarms. Collision avoidance requires substantial computational effort and battery power. By offloading these computations to the Digital Twin, which can predict new formations to avoid collisions, we conserve UAV computational resources and battery life. We introduce a novel approach for formation prediction and test it on UAV swarms using edge computing and Digital Twins. Our results demonstrate that Digital Twins significantly reduce the processing load and communication requirements on the UAVs, thereby saving battery life and reducing collision incidents.
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