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Optimal trajectories for two UAVs in localization of multiple RF sources

机译:定位多个射频源的两架无人机的最优轨迹

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This paper is concerned with optimal trajectory control for two unmanned aerial vehicles (UAVs) in a multisource localization environment. The received signal strength (RSS) at the UAVs in specified time intervals permits passive differential RSS (DRSS)-based localization of multiple radio frequency (RF) sources with unknown transmit powers. A steering algorithm is proposed to update the UAV waypoints in order to minimize the summation of the uncertainty of the source locations. The UAV paths are optimized by maximizing the determinant of the Fisher Information Matrix (FIM). The FIM is approximated at successive waypoints using the estimated locations of the sources. In addition to maximizing the localization accuracy, the objectives of the proposed trajectory control are to minimize the number of UAVs, the mission time and the path length. As the DRSS is a non-linear measurement, an extended Kalman filter (EKF), which is a non-linear filtering technique, is considered in this paper. The efficiency of the approach is depicted through simulations.
机译:本文涉及在多源定位环境中两个无人飞行器(UAV)的最优轨迹控制。在指定时间间隔内,UAV处的接收信号强度(RSS)允许对具有未知发射功率的多个射频(RF)源进行基于被动差分RSS(DRSS)的定位。提出了一种转向算法来更新无人机航路点,以最小化源位置不确定性的总和。通过最大化Fisher信息矩阵(FIM)的行列式来优化UAV路径。使用源的估计位置在连续的航路点处近似FIM。除了最大程度地提高定位精度外,拟议的轨迹控制的目的还在于最大程度地减少无人机的数量,任务时间和路径长度。由于DRSS是一种非线性测量,因此本文考虑了一种扩展的卡尔曼滤波器(EKF),它是一种非线性滤波技术。通过仿真描述了该方法的效率。

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