Parameter Estimation of Cellular Communication Systems Models in Computational MATLAB Environment: A Systematic Solver-based Numerical Optimization Approaches
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Date
2024-06-08
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Publisher
I. J. Computer Network and Information Security
Abstract
Model-based parameter estimation, identification, and optimisation play a dominant role in many aspects of
physical and operational processes in applied sciences, engineering, and other related disciplines. The intricate task
involves engaging and fitting the most appropriate parametric model with nonlinear or linear features to experimental
field datasets priori to selecting the best optimisation algorithm with the best configuration. Thus, the task is usually
geared towards solving a clear optimsation problem. In this paper, a systematic-stepwise approach has been employed
to review and benchmark six numerical-based optimization algorithms in MATLAB computational Environment. The
algorithms include the Gradient Descent (GRA), Levenberg-Marguardt (LEM), Quasi-Newton (QAN), Gauss-Newton
(GUN), Nelda-Meald (NEM), and Trust-Region-Dogleg (TRD). This has been accomplished by engaging them to solve
an intricate radio frequency propagation modelling and parametric estimation in connection with practical spatial signal
data. The spatial signal data were obtained via real-time field drive test conducted around six eNodeBs transmitters,
with case studies taken from different terrains where 4G LTE transmitters are operational. Accordingly, three criteria in
connection with rate of convergence Results show that the approximate hessian-based QAN algorithm, followed by the
LEM algorithm yielded the best results in optimizing and estimating the RF propagation models parameters. The
resultant approach and output of this paper will be of countless assets in assisting the end-users to select the most
preferable optimization algorithm to handle their respective intricate problems.
Description
Keywords
Numerical Optimisation, Model-based Parameter Estimation, Convergence Criteria, Precision Accuracy, Propagation Model, Radio Frequency, Attenuation.