Location-based Fingerprint Downhole Mobile Node Localization Algorithm

H. Zhu, Guanyu Wang, Liang Zhang
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引用次数: 1

Abstract

Aiming at the problem that the wireless signal in coal mine is vulnerable to interference and the positioning accuracy of the node is low when moving, a positioning algorithm based on location fingerprint downhole mobile node is proposed. Firstly, based on the location fingerprint algorithm, the reference points with higher similarity are grouped, and KNN localization is performed respectively, and the position with large error is eliminated by the Grubbs criterion. Secondly, by generating a reasonable particle distribution and setting the particle collection method, the unscented particle filtering algorithm is improved, and the estimated position and state estimation are merged. The experimental results show that the algorithm of grouping KNN screening and improved unscented particle filtering algorithm improves the stability of the system and the positioning accuracy of the mobile node, and reduces the computational complexity of the algorithm.
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基于位置的指纹井下移动节点定位算法
针对煤矿井下移动节点移动时无线信号易受干扰、定位精度低的问题,提出了一种基于位置指纹的井下移动节点定位算法。首先,基于位置指纹算法,对相似度较高的参考点进行分组,分别进行KNN定位,利用Grubbs准则剔除误差较大的位置;其次,通过生成合理的粒子分布和设置粒子收集方法,对无气味粒子滤波算法进行改进,将估计的位置估计和状态估计合并;实验结果表明,分组KNN筛选算法和改进的无气味粒子过滤算法提高了系统的稳定性和移动节点的定位精度,降低了算法的计算复杂度。
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