Adaptive encryption method of sensitive data in data center database based on big data cross-mapping fusion algorithm

Abstract Traditional methods are inadequate for addressing the requirements of data security and efficiency in contemporary data centers. To address the problems of security and transmission efficiency of sensitive data in data center databases, this study proposes an adaptive encryption method for...

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Main Authors: Dingwen Zhang, Shuang Yang, Ming Chen, Lei Zheng, Jiashu Fan, Aidi Dong
Format: Article
Language:English
Published: Springer 2025-08-01
Series:Discover Applied Sciences
Subjects:
Online Access:https://doi.org/10.1007/s42452-025-07581-2
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author Dingwen Zhang
Shuang Yang
Ming Chen
Lei Zheng
Jiashu Fan
Aidi Dong
author_facet Dingwen Zhang
Shuang Yang
Ming Chen
Lei Zheng
Jiashu Fan
Aidi Dong
author_sort Dingwen Zhang
collection DOAJ
description Abstract Traditional methods are inadequate for addressing the requirements of data security and efficiency in contemporary data centers. To address the problems of security and transmission efficiency of sensitive data in data center databases, this study proposes an adaptive encryption method for sensitive data in data center databases based on big data cross-mapping fusion algorithm. Sensitive data collection in data center databases is achieved through sparse representation, compressed measurement, and the use of compressed sensing to recover and reconstruct data. A self-organizing mapping neural network (SOM) is used to perform sensitive data fusion through four steps: Matching, clustering, weight updating, iterative competition, and mapping. The process is optimized by employing the cross validation (CV) method to enhance the efficacy of sensitive data fusion.The improved AES algorithm is used to establish the optimal affine transformation for generating a novel S-box, and is integrated with the squared residual algorithm to implement the key extension of the AES algorithm. This approach transforms the serial operation structure of the AES algorithm into a parallel operation structure, enabling adaptive encryption of fusion sensitive data. Experimental results demonstrate that the security of sensitive data can reach 99% after encryption using this method. This approach facilitates the encryption of sensitive data within the data center and enhances the security of sensitive data in the data center
format Article
id doaj-art-1257c89a30234306b03be1748bfa82bd
institution DOAJ
issn 3004-9261
language English
publishDate 2025-08-01
publisher Springer
record_format Article
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spelling doaj-art-1257c89a30234306b03be1748bfa82bd2025-08-20T03:05:55ZengSpringerDiscover Applied Sciences3004-92612025-08-017812610.1007/s42452-025-07581-2Adaptive encryption method of sensitive data in data center database based on big data cross-mapping fusion algorithmDingwen Zhang0Shuang Yang1Ming Chen2Lei Zheng3Jiashu Fan4Aidi Dong5State Grid Jilin Electric Power Company Limited Information & Telecommunication CompanyState Grid Jilin Electric Power Company Limited InformationState Grid Jilin Electric Power Company Limited Information & Telecommunication CompanyState Grid Jilin Electric Power Company Limited Information & Telecommunication CompanyState Grid Jilin Electric Power Company Limited Information & Telecommunication CompanyState Grid Jilin Electric Power Company Limited Information & Telecommunication CompanyAbstract Traditional methods are inadequate for addressing the requirements of data security and efficiency in contemporary data centers. To address the problems of security and transmission efficiency of sensitive data in data center databases, this study proposes an adaptive encryption method for sensitive data in data center databases based on big data cross-mapping fusion algorithm. Sensitive data collection in data center databases is achieved through sparse representation, compressed measurement, and the use of compressed sensing to recover and reconstruct data. A self-organizing mapping neural network (SOM) is used to perform sensitive data fusion through four steps: Matching, clustering, weight updating, iterative competition, and mapping. The process is optimized by employing the cross validation (CV) method to enhance the efficacy of sensitive data fusion.The improved AES algorithm is used to establish the optimal affine transformation for generating a novel S-box, and is integrated with the squared residual algorithm to implement the key extension of the AES algorithm. This approach transforms the serial operation structure of the AES algorithm into a parallel operation structure, enabling adaptive encryption of fusion sensitive data. Experimental results demonstrate that the security of sensitive data can reach 99% after encryption using this method. This approach facilitates the encryption of sensitive data within the data center and enhances the security of sensitive data in the data centerhttps://doi.org/10.1007/s42452-025-07581-2Cross mapping algorithmData fusionCompressed sensingSensitive dataAES algorithmEncryption method
spellingShingle Dingwen Zhang
Shuang Yang
Ming Chen
Lei Zheng
Jiashu Fan
Aidi Dong
Adaptive encryption method of sensitive data in data center database based on big data cross-mapping fusion algorithm
Discover Applied Sciences
Cross mapping algorithm
Data fusion
Compressed sensing
Sensitive data
AES algorithm
Encryption method
title Adaptive encryption method of sensitive data in data center database based on big data cross-mapping fusion algorithm
title_full Adaptive encryption method of sensitive data in data center database based on big data cross-mapping fusion algorithm
title_fullStr Adaptive encryption method of sensitive data in data center database based on big data cross-mapping fusion algorithm
title_full_unstemmed Adaptive encryption method of sensitive data in data center database based on big data cross-mapping fusion algorithm
title_short Adaptive encryption method of sensitive data in data center database based on big data cross-mapping fusion algorithm
title_sort adaptive encryption method of sensitive data in data center database based on big data cross mapping fusion algorithm
topic Cross mapping algorithm
Data fusion
Compressed sensing
Sensitive data
AES algorithm
Encryption method
url https://doi.org/10.1007/s42452-025-07581-2
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AT shuangyang adaptiveencryptionmethodofsensitivedataindatacenterdatabasebasedonbigdatacrossmappingfusionalgorithm
AT mingchen adaptiveencryptionmethodofsensitivedataindatacenterdatabasebasedonbigdatacrossmappingfusionalgorithm
AT leizheng adaptiveencryptionmethodofsensitivedataindatacenterdatabasebasedonbigdatacrossmappingfusionalgorithm
AT jiashufan adaptiveencryptionmethodofsensitivedataindatacenterdatabasebasedonbigdatacrossmappingfusionalgorithm
AT aididong adaptiveencryptionmethodofsensitivedataindatacenterdatabasebasedonbigdatacrossmappingfusionalgorithm