Authors
Liang Xiao, Xiaoyue Wan, Canhuang Dai, Xiaojiang Du, Xiang Chen, Mohsen Guizani
Publication date
2018/6
Journal
IEEE Wireless Communications
Volume
25
Issue
3
Pages
116-122
Publisher
IEEE
Description
Mobile edge computing usually uses caching to support multimedia contents in 5G mobile Internet to reduce the computing overhead and latency. Mobile edge caching (MEC) systems are vulnerable to various attacks such as denial of service attacks and rogue edge attacks. This article investigates the attack models in MEC systems, focusing on both the mobile offloading and the caching procedures. In this article, we propose security solutions that apply reinforcement learning (RL) techniques to provide secure offloading to the edge nodes against jamming attacks. We also present lightweight authentication and secure collaborative caching schemes to protect data privacy. We evaluate the performance of the RL-based security solution for mobile edge caching and discuss the challenges that need to be addressed in the future.
Total citations
20182019202020212022202320247236059343510
Scholar articles
L Xiao, X Wan, C Dai, X Du, X Chen, M Guizani - IEEE Wireless Communications, 2018