TY - JOUR
T1 - Channel parameter estimation in millimeter-wave propagation environments using genetic algorithm
AU - Gomes, Samuel Borges Ferreira
AU - Simmons, Nidhi
AU - Sofotasios, Paschalis
AU - Yacoub, M.D.
AU - Cotton, Simon
PY - 2023/9/14
Y1 - 2023/9/14
N2 - This paper explores the suitability of the natureinspired Genetic Algorithm (GA) for estimating propagation
channel parameters in an indoor millimeter-wave environment
at 60 GHz. Our work is based on real propagation channel
measurements and the goal is two-fold: i) to estimate physically
plausible parameters, and ii) to provide improvements in terms of
the goodness-of-fit when compared to traditional methods such as
Nonlinear Least-Squares (NLS). To better contextualize the use
of the GA within the meta-heuristic family of algorithms, a more
recent meta-heuristic approach, named Hybrid Grey Wolf and
Whale Optimization Algorithm (HGW-WOA), is also exercised.
We adopt popular small-scale and shadowed fading models which
accurately characterize these mm-wave links. A total of 72 fading
scenarios are investigated. The goodness-of-fit of these models,
using different parameter estimation methods, is assessed through
the Akaike Information Criterion. Our investigation has shown
that the GA overwhelmingly outperformed the NLS. Similarly,
the GA performed better than the HGW-WOA in the majority
of scenarios. Thus, we demonstrate that the GA is a promising
technique for the robust estimation of fading parameters.
AB - This paper explores the suitability of the natureinspired Genetic Algorithm (GA) for estimating propagation
channel parameters in an indoor millimeter-wave environment
at 60 GHz. Our work is based on real propagation channel
measurements and the goal is two-fold: i) to estimate physically
plausible parameters, and ii) to provide improvements in terms of
the goodness-of-fit when compared to traditional methods such as
Nonlinear Least-Squares (NLS). To better contextualize the use
of the GA within the meta-heuristic family of algorithms, a more
recent meta-heuristic approach, named Hybrid Grey Wolf and
Whale Optimization Algorithm (HGW-WOA), is also exercised.
We adopt popular small-scale and shadowed fading models which
accurately characterize these mm-wave links. A total of 72 fading
scenarios are investigated. The goodness-of-fit of these models,
using different parameter estimation methods, is assessed through
the Akaike Information Criterion. Our investigation has shown
that the GA overwhelmingly outperformed the NLS. Similarly,
the GA performed better than the HGW-WOA in the majority
of scenarios. Thus, we demonstrate that the GA is a promising
technique for the robust estimation of fading parameters.
U2 - 10.1109/LAWP.2023.3315422
DO - 10.1109/LAWP.2023.3315422
M3 - Article
SN - 1536-1225
JO - IEEE Antennas and Wireless Propagation Letters
JF - IEEE Antennas and Wireless Propagation Letters
ER -