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UKF-based channel estimation and LOS/NLOS classification in UWB wireless networks

机译:UWB无线网络中基于UKF的信道估计和LOS / NLOS分类

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The paper addresses ultra-wideband (UWB) channel estimation and line-of-sight (LOS) vs. non-line-of-sight classification based on the? application of the unscented Kalman filter (UKF) and the analysis of the multipath channel response characteristics.? For non-linear models, the UKF provides an efficient recursive minimum mean squared error estimation technique that is successfully applied in this work, and supported by numerical results demonstrating its effectiveness in UWB multipath channel gain and time delay estimation. The multipath channel response obtained from a limited number of channel taps is subsequently characterized in terms of relevant statistical parameters including kurtosis and mean excess delay. This characterization reveals clear differences in the statistics of these parameters under LOS and NLOS propagation conditions for various channel types in residential, office, outdoor and industrial environments. Based on the estimated parameters probability density functions under LOS/NLOS conditions, a likelihood ratio test (LRT) for hypothesis classification is performed for the different UWB channel models, and?numerical results show that highly reliable LOS vs. NLOS classification is achievable, with accuracy exceeding 90% for most cases of practical interest. These results can then be further exploited in enhancing the performance of positioning applications.
机译:该论文针对超宽带(UWB)信道估计和视线(LOS)与基于非视线的分类进行了研究。无味卡尔曼滤波器(UKF)的应用和多径信道响应特性分析。对于非线性模型,UKF提供了一种有效的递归最小均方误差估计技术,该技术已成功应用于这项工作中,并得到了数值结果的证明,证明了其在UWB多径信道增益和时延估计中的有效性。随后,根据相关统计参数(包括峰度和平均超额延迟)来表征从有限数量的信道抽头获得的多径信道响应。此特性揭示了在住宅,办公室,室外和工业环境中各种信道类型的LOS和NLOS传播条件下,这些参数的统计差异明显。基于LOS / NLOS条件下的估计参数概率密度函数,针对不同的UWB信道模型进行了假设分类的似然比检验(LRT),数值结果表明,可以实现高度可靠的LOS vs. NLOS分类。在大多数实际应用中,精度超过90%。这些结果可进一步用于增强定位应用程序的性能。

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