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Fast or Slow: An Autonomous Speed Control Approach for UAV-assisted IoT Data Collection Networks

机译:快速或缓慢:无人机辅助物联网数据收集网络的自主控制方法

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Unmanned Aerial Vehicles (UAVs) have been emerging as an effective solution for IoT data collection networks thanks to their outstanding flexibility, mobility, and low operation costs. However, due to the limited energy and uncertainty from the data collection process, speed control is one of the most important factors while optimizing the energy usage efficiency and performance for UAV collectors. This work aims to develop a novel autonomous speed control approach to address this issue. To that end, we first formulate the dynamic speed control task of a UAV as a Markov decision process taking into account its energy status and location. In this way, the Q-learning algorithm can be adopted to obtain the optimal speed control policy for the UAV. To further improve the system performance, we develop a highly-effective deep dueling double Q-learning algorithm utilizing outstanding features of the deep neural networks as well as advanced dueling architecture to quickly stabilize the learning process and obtain the optimal policy. Through simulations, we show that our proposed solution can achieve up to 40% greater performance, i.e., an average throughput of the system, compared with other conventional methods. Importantly, the simulation results also reveal significant impacts of UAV’s energy and charging time on the system performance.
机译:由于其出色的灵活性,移动性和低运行成本,无人驾驶空中车辆(无人机)已成为IOT数据收集网络的有效解决方案。然而,由于数据收集过程中的能量和不确定性有限,速度控制是最重要的因素之一,同时优化UAV收集器的能源使用效率和性能。这项工作旨在开发一种新颖的自主速度控制方法来解决这个问题。为此,我们首先考虑到它的能量状态和位置的马尔可夫决策过程,首先制定UAV的动态速度控制任务。以这种方式,可以采用Q学习算法来获得UAV的最佳速度控制策略。为了进一步提高系统性能,我们开发了一种利用深神经网络的出色特征以及高级决斗架构的高效深入双Q学习算法,以快速稳定学习过程并获得最佳政策。通过模拟,我们认为,与其他常规方法相比,我们所提出的解决方案能够实现高达40%的性能,即系统的平均吞吐量。重要的是,仿真结果还揭示了UAV的能量和充电时间对系统性能的显着影响。

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