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Extreme learning machine terrain-based navigation for unmanned aerial vehicles

机译:极限学习机基于地形的无人机导航

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Unmanned aerial vehicles (UAVs) rely on global positioning system (GPS) information to ascertain its position for navigation during mission execution. In the absence of GPS information, the capability of a UAV to carry out its intended mission is hindered. In this paper, we learn alternative means for UAVs to derive real-time positional reference information so as to ensure the continuity of the mission. We present extreme learning machine as a mechanism for learning the stored digital elevation information so as to aid UAVs to navigate through terrain without the need for GPS. The proposed algorithm accommodates the need of the on-line implementation by supporting multi-resolution terrain access, thus capable of generating an immediate path with high accuracy within the allowable time scale. Numerical tests have demonstrated the potential benefits of the approach.
机译:无人机(UAV)依靠全球定位系统(GPS)信息来确定其位置,以执行任务。在没有GPS信息的情况下,无人机执行其预定任务的能力受到阻碍。在本文中,我们学习了无人机获取实时位置参考信息的替代方法,以确保任务的连续性。我们目前将极限学习机作为一种用于学习存储的数字高程信息的机制,以帮助无人机在不需要GPS的情况下导航穿越地形。所提出的算法通过支持多分辨率地形访问来适应在线实施的需求,因此能够在允许的时间范围内以高精度生成即时路径。数值测试证明了该方法的潜在优势。

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