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An Efficient Geometry-constrained NLOS Mitigation Algorithm Based on ML-detection

机译:基于ML检测的高效几何约束NLOS缓解算法

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摘要

Mobile location estimation has attracted much attention in recent years. However, the vital problem that affects location estimation accuracy is mainly due to the unavoidable non-line–of-sight (NLOS) propagation in mobile environments. In this paper, an effective technique is proposed to mitigate the NLOS errors when the range measurements corrupted by NLOS errors are not identifiable. In order to enhance the precision of the location estimate, the proposed scheme incorporates the geometric constraints within the Maximum Likelihood (ML) detection algorithm, which not only preserves the computational efficiency of the optimal ML detection algorithm, but also obtains precise location estimation under NLOS environments. Analysis and simulation results indicate that the proposed algorithm can significantly restrain the NLOS errors and achieve better location accuracy, compared with the existing mobile location estimation schemes.
机译:近年来,移动地点估计引起了很多关注。然而,影响位置估计精度的重要问题主要是由于移动环境中不可避免的非视野(NLOS)传播。在本文中,提出了一种有效的技术,当NLOS错误损坏的范围测量不可识别时,可以减轻NLOS错误。为了提高位置估计的精度,所提出的方案包括最大似然(ML)检测算法内的几何约束,这不仅保留了最佳ML检测算法的计算效率,而且还获得了NLO下的精确定位估计环境。分析和仿真结果表明,与现有的移动位置估计方案相比,该算法可以显着抑制NLOS错误并实现更好的位置精度。

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