A Study on Information Classification and Storage in Cloud Computing Data Centers Based on Group Collaborative Intelligent Clustering

Internet of things (IoT) and cloud computing are combined to form a cloud computing data center, and cloud computing provides virtualization, storage, computing, and other support services for IoT applications. Data is the foundation and core of cloud IoT platform applications, and massive multisour...

Full description

Saved in:
Bibliographic Details
Main Authors: Jie Ren, Lijuan Liu
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Journal of Electrical and Computer Engineering
Online Access:http://dx.doi.org/10.1155/2022/1476661
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850174044726362112
author Jie Ren
Lijuan Liu
author_facet Jie Ren
Lijuan Liu
author_sort Jie Ren
collection DOAJ
description Internet of things (IoT) and cloud computing are combined to form a cloud computing data center, and cloud computing provides virtualization, storage, computing, and other support services for IoT applications. Data is the foundation and core of cloud IoT platform applications, and massive multisource heterogeneous IoT data aggregation and storage have basic requirements such as real-time, security, and scalability. This paper focuses on the aggregation and storage methods of massive heterogeneous cloud IoT data, solving the multisource data aggregation problem caused by inconsistent protocols and the heterogeneous data storage problem caused by inconsistent data types. A heterogeneous network protocol adaptation and data aggregation method is proposed for the multisource data aggregation problem caused by protocol inconsistency. A protocol adaptation layer is set up in the IoT virtual gateway to achieve compatibility with multiple types of data aggregation protocols, ensuring adaptive access to different types of IoT nodes, and on this basis, data is transmitted to the cloud IoT platform through a unified interface, shielding the variability of IoT sensing devices. Given the problems of device forgery and malicious tampering in the data aggregation process, we propose a fast authentication and data storage method for IoT devices based on “API key” and implant the device authentication API key into the protocol adaptation layer of the virtual gateway to realize the source authentication of IoT nodes and ensure the authenticity of data.
format Article
id doaj-art-c72dfb68eb3d410595427a470b844813
institution OA Journals
issn 2090-0155
language English
publishDate 2022-01-01
publisher Wiley
record_format Article
series Journal of Electrical and Computer Engineering
spelling doaj-art-c72dfb68eb3d410595427a470b8448132025-08-20T02:19:44ZengWileyJournal of Electrical and Computer Engineering2090-01552022-01-01202210.1155/2022/1476661A Study on Information Classification and Storage in Cloud Computing Data Centers Based on Group Collaborative Intelligent ClusteringJie Ren0Lijuan Liu1Xinyang Agriculture and Forestry UniversityXinyang Agriculture and Forestry UniversityInternet of things (IoT) and cloud computing are combined to form a cloud computing data center, and cloud computing provides virtualization, storage, computing, and other support services for IoT applications. Data is the foundation and core of cloud IoT platform applications, and massive multisource heterogeneous IoT data aggregation and storage have basic requirements such as real-time, security, and scalability. This paper focuses on the aggregation and storage methods of massive heterogeneous cloud IoT data, solving the multisource data aggregation problem caused by inconsistent protocols and the heterogeneous data storage problem caused by inconsistent data types. A heterogeneous network protocol adaptation and data aggregation method is proposed for the multisource data aggregation problem caused by protocol inconsistency. A protocol adaptation layer is set up in the IoT virtual gateway to achieve compatibility with multiple types of data aggregation protocols, ensuring adaptive access to different types of IoT nodes, and on this basis, data is transmitted to the cloud IoT platform through a unified interface, shielding the variability of IoT sensing devices. Given the problems of device forgery and malicious tampering in the data aggregation process, we propose a fast authentication and data storage method for IoT devices based on “API key” and implant the device authentication API key into the protocol adaptation layer of the virtual gateway to realize the source authentication of IoT nodes and ensure the authenticity of data.http://dx.doi.org/10.1155/2022/1476661
spellingShingle Jie Ren
Lijuan Liu
A Study on Information Classification and Storage in Cloud Computing Data Centers Based on Group Collaborative Intelligent Clustering
Journal of Electrical and Computer Engineering
title A Study on Information Classification and Storage in Cloud Computing Data Centers Based on Group Collaborative Intelligent Clustering
title_full A Study on Information Classification and Storage in Cloud Computing Data Centers Based on Group Collaborative Intelligent Clustering
title_fullStr A Study on Information Classification and Storage in Cloud Computing Data Centers Based on Group Collaborative Intelligent Clustering
title_full_unstemmed A Study on Information Classification and Storage in Cloud Computing Data Centers Based on Group Collaborative Intelligent Clustering
title_short A Study on Information Classification and Storage in Cloud Computing Data Centers Based on Group Collaborative Intelligent Clustering
title_sort study on information classification and storage in cloud computing data centers based on group collaborative intelligent clustering
url http://dx.doi.org/10.1155/2022/1476661
work_keys_str_mv AT jieren astudyoninformationclassificationandstorageincloudcomputingdatacentersbasedongroupcollaborativeintelligentclustering
AT lijuanliu astudyoninformationclassificationandstorageincloudcomputingdatacentersbasedongroupcollaborativeintelligentclustering
AT jieren studyoninformationclassificationandstorageincloudcomputingdatacentersbasedongroupcollaborativeintelligentclustering
AT lijuanliu studyoninformationclassificationandstorageincloudcomputingdatacentersbasedongroupcollaborativeintelligentclustering