Back to Publications
2020Advances in Science Technology and Engineering Systems Journal

A Proactive Mobile Edge Cache Policy Based on the Prediction by Partial Matching

Li, Lincan, Kwong, Chiew Foong, and Liu, Qianyu

Abstract

The proactive caching has been an emerging approach to cost-effectively boost the network capacity and reduce access latency. While the performance of which extremely relies on the content prediction. Therefore, in this paper, a proactive cache policy is proposed in a distributed manner considering the prediction of the content popularity and user location to minimise the latency and maximise the cache hit rate. Here, a backpropagation neural network is applied to predict the content popularity, and prediction by partial matching is chosen to predict the user location. The simulation results reveal our proposed cache policy is around 27%-60% improved in the cache hit ratio and 14%-60% reduced in the average latency, compared with the two conventional reactive policies, i.e., LFU and LRU policies.

Keywords

CacheComputer scienceEnhanced Data Rates for GSM EvolutionMatching (statistics)Parallel computingArtificial intelligenceStatisticsMathematics

Authors from this lab

Dr Chiew Foong Kwong

Dr Chiew Foong Kwong

Associate Professor, Head of Department