EURASIP Journal on Advances in Signal Processing (Jan 2023)

On the application of generalized linear mixed models for predicting path loss in LTE networks

  • Achraf Cohen,
  • Yazan A. Alqudah

DOI
https://doi.org/10.1186/s13634-022-00957-1
Journal volume & issue
Vol. 2023, no. 1
pp. 1 – 13

Abstract

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Abstract To meet the ever-growing demand for higher data rates, accurate channel models are needed for optimal design and deployment of mobile wireless networks. This work proposes a new method for addressing path loss modeling at 800 MHz of suburban environment based on field measurements. Using generalized linear mixed models, we develop a new statistical model that accounts for the autocorrelation among measurements at the same distance at different times. The proposed method allows linear, quadratic, and cubic relationship forms between the path loss measurements and the natural logarithm of the distance, which is almost unexplored as existing models use a straight line relationship. A comparison study consists of comparing nine propagation models in terms of the mean absolute prediction error. The new model performs over $$30\%$$ 30 % better than the existing models for the considered measurements. We also show that a cubic relationship form between path loss measurements and the logarithm of distance could be more suitable than a straight line form for prediction purposes. The results show that the generalized linear mixed models significantly improve the prediction power regardless of the form of the model (linear, quadratic, or cubic).

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