Penalty Function Based Anchor-Free Positioning

Ran Wang, Jie He, Liyuan Xu, Qin Wang
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引用次数: 0

Abstract

Typically, anchor-free localization is considered as a nonlinear programming problem in the existing literatures. However, the nonlinear programming algorithms can only achieve constrained optimization and the localization accuracy of such algorithms depends on the precision of initial coordinators, which are the inputs of the algorithm and usually obtained based on GPS. Due to this defect, the algorithm is invalid in GPS-denied area, such as indoor area, dense urban area and forest. In our research, we combined nonlinear programming algorithm with penalty function to solve this problem. Our simulation results show that the localization accuracy of proposed algorithm is not affected by the precision of the initial coordinators, even when the initial coordinators is set randomly. Performance comparisons are also presented to show the improvement of this algorithm.
基于罚函数的无锚定位
在现有文献中,无锚点定位通常被认为是一个非线性规划问题。然而,非线性规划算法只能实现约束优化,其定位精度取决于初始协调器的精度,而初始协调器是算法的输入,通常基于GPS获得。由于这一缺陷,该算法在室内区域、密集城市区域和森林等gps拒绝区域无效。在我们的研究中,我们将非线性规划算法与罚函数相结合来解决这一问题。仿真结果表明,即使随机设置初始协调器,该算法的定位精度也不受初始协调器精度的影响。性能比较也显示了该算法的改进。
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