Improving Cached Data Offloading Optimization Based on Enhanced Hybrid Ant Colony Genetic Algorithm

Publons ID(not set)
Wos IDWOS:000842744200001
Doi10.1109/ACCESS.2022.3197205
TitleImproving Cached Data Offloading Optimization Based on Enhanced Hybrid Ant Colony Genetic Algorithm
First Author
Last Author
AuthorsZulfa, MI; Hartanto, R; Permanasari, AE; Ali, W;
Publish Date2022
Journal NameIEEE ACCESS
Citation1
AbstractThe data offloading mechanism is one of the critical strategies needed on edge networks to help cloud computing network performance in serving user data requests. This strategy should be optimized to prevent network congestion. The main problem of this strategy is how to assess the priority of cached data so that the cache memory buffer capacity can be optimized. In this paper, we modeled the cached data offloading strategy using the Knapsack Problem 0/1 (KP01) approach. Several researchers proposed a meta-heuristic algorithm to solve cached data offloading using the KP01 approach. Meta-heuristic algorithms require a reliable solution selection method to find the global optimal solution. However, some studies still use the roulette wheel selection method to provide a set of solutions. The RWS method has a weakness of imbalance the particle fitness with its cumulative probability. Therefore, it is difficult to find the global optimal solution. This study proposed a nested-Roulette Wheel Selection (nRWS) method on hybrid Ant Colony Optimization (ACO) and Genetic Algorithm (GA) to address the cached data offloading optimization using the KP01 approach. The simulation results show that the proposed nRWS method is able to find the global optimal solution in terms of the value of the objective function and hit ratio which is superior to previous studies.
Publish TypeJournal
Publish Year2022
Page Begin84558
Page End84568
Issn2169-3536
Eissn
Urlhttps://www.webofscience.com/wos/woscc/full-record/WOS:000842744200001
AuthorDr. MULKI INDANA ZULFA, S.T, M.T
File121357.pdf