Metaheuristic Algorithms in IoT: Optimized Edge Node Localization
Künye
KIANI, Farzad & Amir SEYYEDABBASI. "Metaheuristic Algorithms in IoT: Optimized Edge Node Localization". Engineering Applications of Modern Metaheuristics,1069 (2022): 19-39.Özet
In this study, a new hybrid method is proposed by using the advantages
of Grey Wolf Optimizer (GWO) and Moth-Flame Optimization (MFO) algorithms.
The proposed hybrid metaheuristic algorithm tries to find the near-optimal solution
with high efficiency by using the advantage of both algorithms. At the same time, the
shortcomings of each will be eliminated. The proposed algorithm is used to solve the
edge computing node localization problem, which is one of the important problems
on the Internet of Things (IoT) systems, with the least error rate. This algorithm
has shown a successful performance in solving this problem with a smooth and
efficient position update mechanism. It was also applied to 30 famous benchmark
functions (CEC2015 and CEC2019) to prove the accuracy and general use of the
proposed method. It has been proven from the results that it is the best algorithm
with a success rate of 54% and 57%, respectively.