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UAV Aided Search and Rescue Operation Using Reinforcement Learning

机译:UAV使用强化学习的搜索和救援操作

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Owing to the enhanced flexibility in deployment and decreasing costs of manufacturing, the demand for unmanned aerial vehicles (UAVs) is expected to soar in the upcoming years. In this paper, we explore a UAV aided search and rescue (SAR) operation in indoor environments, where the GPS signals might not be reliable. We consider a SAR scenario where the UAV tries to locate a victim trapped in an indoor environment by sensing the RF signals emitted from a smart device owned by the victim. To locate the victim as fast as possible, we leverage tools from reinforcement learning (RL). Received signal strength (RSS) at the UAV depends on the distance from the source, indoor shadowing and fading parameters, and antenna radiation pattern of the receiver mounted on the UAV. To make our analysis more realistic, we model two indoor scenarios with different dimensions using a commercial ray tracing software. Then, the corresponding RSS values at each possible discrete UAV location are extracted and used in a Q-learning framework. Unlike the traditional location-based navigation approach that exploits GPS coordinates, our method uses the RSS to define the states and rewards of the RL algorithm. We compare the performance of the proposed method where directional and omnidirectional antennas are used. The results reveal that the use of directional antennas provides faster convergence rates than the omnidirectional antennas.
机译:在部署由于增强的灵活性和降低制造成本,为无人驾驶飞行器(UAV)的需求预计将在未来几年内飞速增长。在本文中,我们将探讨在室内环境中,GPS信号可能不可靠的无人机辅助搜索和救援(SAR)操作。我们认为在无人机试图通过感测从被害人拥有的智能设备所发出的射频信号来定位被困在室内环境中的受害者SAR场景。要找到受害者尽可能快,我们利用工具从强化学习(RL)。在UAV接收信号强度(RSS)取决于从源,室内阴影和衰落参数的距离,和安装在UAV接收机的天线辐射模式。为了使我们的分析更逼真,我们模型使用商业光线跟踪软件不同的维度两个室内场景。然后,在每一个可能的离散UAV位置对应的RSS值被提取,并在Q学习框架使用。不同于利用传统的基于位置的导航方式的GPS坐标,我们的方法使用RSS定义状态和RL算法的奖励。我们比较建议的方法,其中定向和全向天线时的性能。结果表明,使用定向天线的提供更快的收敛速度比全向天线。

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