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Non-line-of-sight identification based on unsupervised machine learning in ultra wideband systems

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67 Scopus citations

Abstract

Identification of line-of-sight (LOS) and non-line-of-sight (NLOS) propagation conditions is very useful in ultra wideband localization systems. In the identification, supervised machine learning is often used, but it requires exorbitant efforts to maintain and label the LOS and NLOS database. In this paper, we apply unsupervised machine learning approach called 'expectation maximization for Gaussian mixture models' to classify LOS and NLOS components. The key advantage of applying unsupervised machine learning is that it does not require any rigorous and explicit labeling of the database at a certain location. The simulation results demonstrate that by using the proposed algorithm, LOS and NLOS signals can be classified with 86.50% correct rate, 12.70% false negative, and 0.8% false positive rate. We also compare the proposed algorithm with the existing cutting-edge supervised machine learning algorithms in terms of computational complexity and signals' classification performance.

Original languageEnglish
Article number8666972
Pages (from-to)32464-32471
Number of pages8
JournalIEEE Access
Volume7
DOIs
StatePublished - 2019

Keywords

  • Expectation maximization
  • Gaussian mixture models
  • non-line-of-sight identification
  • ultra wideband systems
  • unsupervised machine learning

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