LRU-GENACO: A Hybrid Cached Data Optimization Based on the Least Used Method Improved Using Ant Colony and Genetic Algorithms

Publons ID(not set)
Wos IDWOS:000866695100001
Doi10.3390/electronics11192978
TitleLRU-GENACO: A Hybrid Cached Data Optimization Based on the Least Used Method Improved Using Ant Colony and Genetic Algorithms
First Author
Last Author
AuthorsZulfa, MI; Hartanto, R; Permanasari, AE; Ali, W;
Publish DateOCT 2022
Journal NameELECTRONICS
Citation
AbstractAn optimization strategy for cached data offloading plays a crucial role in the edge network environment. This strategy can improve the performance of edge nodes with limited cache memory to serve data service requests from user terminals. The main challenge that must be solved in optimizing cached data offloading is assessing and selecting the cached data with the highest profit to be stored in the cache memory. Selecting the appropriate cached data can improve the utility of memory space to increase HR and reduce LSR. In this paper, we model the cached data offloading optimization strategy as the classic optimization KP01. The cached data offloading optimization strategy is then improved using a hybrid approach of three algorithms: LRU, ACO, and GA, called LRU-GENACO. The proposed LRU-GENACO was tested using four real proxy log datasets from IRCache. The simulation results show that the proposed LRU-GENACO hit ratio is superior to the LRU GDS SIZE algorithms by 13.1%, 26.96%, 53.78%, and 81.69%, respectively. The proposed LRU-GENACO method also reduces the average latency by 25.27%.
Publish TypeJournal
Publish Year2022
Page Begin(not set)
Page End(not set)
Issn
Eissn2079-9292
Urlhttps://www.webofscience.com/wos/woscc/full-record/WOS:000866695100001
AuthorDr. MULKI INDANA ZULFA, S.T, M.T
File121355.pdf