Trajectory Planing for Cooperating Unmanned Aerial Vehicles in the IoT

Emmanuel Tuyishimire, A. Bagula, S. Rekhis, N. Boudriga
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引用次数: 8

Abstract

The use of Unmanned Aerial Vehicles (UAVs) in data transport has attracted a lot of attention and applications, as a modern traffic engineering technique used in data sensing, transport, and delivery to where infrastructure is available for its interpretation. Due to UAVs’ constraints such as limited power lifetime, it has been necessary to assist them with ground sensors to gather local data, which has to be transferred to UAVs upon visiting the sensors. The management of such ground sensor communication together with a team of flying UAVs constitutes an interesting data muling problem, which still deserves to be addressed and investigated. This paper revisits the issue of traffic engineering in Internet-of-Things (IoT) settings, to assess the relevance of using UAVs for the persistent collection of sensor readings from the sensor nodes located in an environment and their delivery to base stations where further processing is performed. We propose a persistent path planning and UAV allocation model, where a team of heterogeneous UAVs coming from various base stations are used to collect data from ground sensors and deliver the collected information to their closest base stations. This problem is mathematically formalised as a real-time constrained optimisation model, and proven to be NP-hard. The paper proposes a heuristic solution to the problem and evaluates its relative efficiency through performing experiments on both artificial and real sensors networks, using various scenarios of UAVs settings.
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物联网中协同无人机的轨迹规划
作为一种现代交通工程技术,无人机在数据传输中的应用已经引起了广泛的关注和应用,它用于数据感知、传输和交付到有基础设施可用于数据解释的地方。由于无人机的限制,如有限的功率寿命,有必要协助他们与地面传感器收集本地数据,这些数据必须在访问传感器时传输给无人机。这种地面传感器通信的管理与一组飞行无人机构成了一个有趣的数据骡子问题,这仍然值得解决和研究。本文重新审视了物联网(IoT)设置中的流量工程问题,以评估使用无人机从位于环境中的传感器节点持续收集传感器读数并将其传送到执行进一步处理的基站的相关性。我们提出了一种持久路径规划和无人机分配模型,其中使用来自不同基站的异构无人机团队从地面传感器收集数据并将收集到的信息发送到最近的基站。这个问题在数学上被形式化为一个实时约束优化模型,并被证明是np困难的。本文提出了一种启发式解决方案,并通过在人工和真实传感器网络上进行实验,使用不同的无人机设置场景,评估了其相对效率。
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