Statistical LOS/NLOS Classification for UWB Channels
Mohammed Dahiru Buhari, Tri Bagus Susilo, Irfan Khan, and Bashir, Olaniyi Sadiq

TL;DR
This paper develops statistical techniques using parameters from UWB Channel Impulse Response to accurately classify LOS and NLOS channels, improving positioning reliability in complex environments.
Contribution
It introduces multiple statistical parameter-based methods and joint PDFs for enhanced UWB LOS/NLOS classification, utilizing likelihood ratio and hypothesis testing.
Findings
Effective classification accuracy achieved
Improved robustness in multipath environments
Enhanced positioning system performance
Abstract
Ultrawideband (UWB) technology has attracted a lot of attention for indoor and outdoor positioning systems due to its high accuracy and robustness in non-line-of-sight (NLOS) environments. However, UWB signals are affected by multipath propagation which causes errors in localization. To overcome this problem, researchers have proposed various techniques for NLOS identification and mitigation. One of the approaches is statistical LOS/NLOS classification, which uses statistical parameters of the received signal to distinguish between LOS and NLOS channels. In this paper, we formulated several techniques which can be used for effectively classifying a Line of Sight (LOS) channel from a Non-Line of Sight (NLOS) channel. Various parameters obtained from Channel Impulse Response (CIR) like Skewness, Kurtosis, Root Mean Squared Delay Spread (RDS), Mean Excess Delay (MED), Energy, Energy Ratio,…
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