Social-Aware Edge Caching Strategy of Video Resources in 5G Ultra-Dense Network

The video traffic offloading in edge networks is an effective method for remission of congestion of backward paths in 5G networks by continual optimization of video distribution to promote scale and efficiency of video delivery in edge networks (e.g., D2D-based near-end sharing). Because the video r...

Full description

Bibliographic Details
Main Authors: Shijie Jia, Zhen Zhou, WeiLing Li, Youzhong Ma, Ruiling Zhang, Tianyin Wang
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Mobile Information Systems
Online Access:http://dx.doi.org/10.1155/2021/6625629
id doaj-8397edc230c24425bc391fd17bee0dbd
record_format Article
spelling doaj-8397edc230c24425bc391fd17bee0dbd2021-07-02T18:36:25ZengHindawi LimitedMobile Information Systems1875-905X2021-01-01202110.1155/2021/6625629Social-Aware Edge Caching Strategy of Video Resources in 5G Ultra-Dense NetworkShijie Jia0Zhen Zhou1WeiLing Li2Youzhong Ma3Ruiling Zhang4Tianyin Wang5Academy of Information TechnologyAcademy of Information TechnologyAcademy of Information TechnologyAcademy of Information TechnologyAcademy of Information TechnologyAcademy of Mathematical ScienceThe video traffic offloading in edge networks is an effective method for remission of congestion of backward paths in 5G networks by continual optimization of video distribution to promote scale and efficiency of video delivery in edge networks (e.g., D2D-based near-end sharing). Because the video resources are dispersedly cached in local buffer of mobile devices of video users, the management of local video resources of video users in edge networks (e.g., caching and removing of local videos) causes dynamic variation of video distribution in networks. The real-time adjustment of local resources of users in terms of the influence levels (e.g., promotion and recession) of video sharing performance is significant for the continual distribution optimization. In this paper, we propose a novel Social-aware Edge Caching Strategy of Video Resources in 5G Ultra-Dense Network (SECS). SECS designs an estimation method of interest domain of users, which employs the Spectral Clustering to generate initial video clusters and makes use of the Fuzzy C-Means (FCM) to refine the initial video clusters. A user clustering method is proposed, which enables the users with common and similar interests to be clustered into the same groups by estimating similarity levels of interest domain between users. SECS designs a performance-aware video caching strategy, which enables the users intelligently implement management (caching and removing) of local video resources in terms of influence for the intragroup sharing performance. Extensive tests show how SECS achieves much better performance results in comparison with the state-of-the-art solutions.http://dx.doi.org/10.1155/2021/6625629
collection DOAJ
language English
format Article
sources DOAJ
author Shijie Jia
Zhen Zhou
WeiLing Li
Youzhong Ma
Ruiling Zhang
Tianyin Wang
spellingShingle Shijie Jia
Zhen Zhou
WeiLing Li
Youzhong Ma
Ruiling Zhang
Tianyin Wang
Social-Aware Edge Caching Strategy of Video Resources in 5G Ultra-Dense Network
Mobile Information Systems
author_facet Shijie Jia
Zhen Zhou
WeiLing Li
Youzhong Ma
Ruiling Zhang
Tianyin Wang
author_sort Shijie Jia
title Social-Aware Edge Caching Strategy of Video Resources in 5G Ultra-Dense Network
title_short Social-Aware Edge Caching Strategy of Video Resources in 5G Ultra-Dense Network
title_full Social-Aware Edge Caching Strategy of Video Resources in 5G Ultra-Dense Network
title_fullStr Social-Aware Edge Caching Strategy of Video Resources in 5G Ultra-Dense Network
title_full_unstemmed Social-Aware Edge Caching Strategy of Video Resources in 5G Ultra-Dense Network
title_sort social-aware edge caching strategy of video resources in 5g ultra-dense network
publisher Hindawi Limited
series Mobile Information Systems
issn 1875-905X
publishDate 2021-01-01
description The video traffic offloading in edge networks is an effective method for remission of congestion of backward paths in 5G networks by continual optimization of video distribution to promote scale and efficiency of video delivery in edge networks (e.g., D2D-based near-end sharing). Because the video resources are dispersedly cached in local buffer of mobile devices of video users, the management of local video resources of video users in edge networks (e.g., caching and removing of local videos) causes dynamic variation of video distribution in networks. The real-time adjustment of local resources of users in terms of the influence levels (e.g., promotion and recession) of video sharing performance is significant for the continual distribution optimization. In this paper, we propose a novel Social-aware Edge Caching Strategy of Video Resources in 5G Ultra-Dense Network (SECS). SECS designs an estimation method of interest domain of users, which employs the Spectral Clustering to generate initial video clusters and makes use of the Fuzzy C-Means (FCM) to refine the initial video clusters. A user clustering method is proposed, which enables the users with common and similar interests to be clustered into the same groups by estimating similarity levels of interest domain between users. SECS designs a performance-aware video caching strategy, which enables the users intelligently implement management (caching and removing) of local video resources in terms of influence for the intragroup sharing performance. Extensive tests show how SECS achieves much better performance results in comparison with the state-of-the-art solutions.
url http://dx.doi.org/10.1155/2021/6625629
work_keys_str_mv AT shijiejia socialawareedgecachingstrategyofvideoresourcesin5gultradensenetwork
AT zhenzhou socialawareedgecachingstrategyofvideoresourcesin5gultradensenetwork
AT weilingli socialawareedgecachingstrategyofvideoresourcesin5gultradensenetwork
AT youzhongma socialawareedgecachingstrategyofvideoresourcesin5gultradensenetwork
AT ruilingzhang socialawareedgecachingstrategyofvideoresourcesin5gultradensenetwork
AT tianyinwang socialawareedgecachingstrategyofvideoresourcesin5gultradensenetwork
_version_ 1721324487997128704