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Genetic Algorithm Approach to the 3D Node Localization in TDOA Systems

机译:TDOA系统中3D节点定位的遗传算法方法

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摘要

Positioning asynchronous architectures based on time measurements are reaching growing importance in Local Positioning Systems (LPS). These architectures have special relevance in precision applications and indoor/outdoor navigation of automatic vehicles such as Automatic Ground Vehicles (AGVs) and Unmanned Aerial Vehicles (UAVs). The positioning error of these systems is conditioned by the algorithms used in the position calculation, the quality of the time measurements, and the sensor deployment of the signal receivers. Once the algorithms have been defined and the method to compute the time measurements has been selected, the only design criteria of the LPS is the distribution of the sensors in the three-dimensional space. This problem has proved to be NP-hard, and therefore a heuristic solution to the problem is recommended. In this paper, a genetic algorithm with the flexibility to be adapted to different scenarios and ground modelings is proposed. This algorithm is used to determine the best node localization in order to reduce the Cramér-Rao Lower Bound (CRLB) with a heteroscedastic noise consideration in each sensor of an Asynchronous Time Difference of Arrival (A-TDOA) architecture. The methodology proposed allows for the optimization of the 3D sensor deployment of a passive A-TDOA architecture, including ground modeling flexibility and heteroscedastic noise consideration with sequential iterations, and reducing the spatial discretization to achieve better results. Results show that optimization with 15% of elitism and a Tournament 3 selection strategy offers the best maximization for the algorithm.
机译:在本地定位系统(LPS)中,基于时间测量的异步定位架构变得越来越重要。这些体系结构在诸如自动地面车辆(AGV)和无人飞行器(UAV)之类的自动车辆的精确应用和室内/室外导航中具有特殊的意义。这些系统的定位误差取决于位置计算中使用的算法,时间测量的质量以及信号接收器的传感器部署。一旦定义了算法并选择了用于计算时间测量值的方法,LPS的唯一设计标准就是传感器在三维空间中的分布。已证明此问题是NP难题,因此建议对该问题进行启发式解决。本文提出了一种遗传算法,可以灵活地适应不同的场景和地面建模。此算法用于确定最佳节点定位,以便在异步到达时间差(A-TDOA)架构的每个传感器中使用异方差噪声考虑来减少Cramér-Rao下界(CRLB)。所提出的方法可以优化无源A-TDOA架构的3D传感器部署,包括地面建模灵活性和具有顺序迭代的异方差噪声考虑,并减少空间离散化以获得更好的结果。结果表明,使用15%的精英水平和锦标赛3选择策略进行优化可为该算法提供最佳的最大化。

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