Data filter function incremental mining based on feature selection in an active distribution network

Compared with traditional distributed networks, the complex access environment, flexible access mode, massive access terminal, and data in an active distribution network will bring great security challenges to data transmission. The existing data security methods, such as access control and encrypti...

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Main Authors: Song Deng, Qingyuan Cai, Zi Zhang, Lechan Yang, Tinglei Huang, Changan Yuan
Format: Article
Language:English
Published: Wiley 2020-04-01
Series:IET Cyber-Physical Systems
Subjects:
Online Access:https://digital-library.theiet.org/content/journals/10.1049/iet-cps.2019.0094
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spelling doaj-72f3eae5e36b47deb47eb067897f3ff92021-04-02T15:56:40ZengWileyIET Cyber-Physical Systems2398-33962020-04-0110.1049/iet-cps.2019.0094IET-CPS.2019.0094Data filter function incremental mining based on feature selection in an active distribution networkSong Deng0Qingyuan Cai1Zi Zhang2Lechan Yang3Tinglei Huang4Changan Yuan5Nanjing University of Posts and TelecommunicationsNanjing University of Posts and TelecommunicationsGuilin University of Electronic TechnologyJinling Institute of TechnologyInstitute of Software Chinese Academy of SciencesGuangxi Academy of SciencesCompared with traditional distributed networks, the complex access environment, flexible access mode, massive access terminal, and data in an active distribution network will bring great security challenges to data transmission. The existing data security methods, such as access control and encryption, address the security of massive, high dimensional, and non-text data in the active distribution network. Therefore, feature selection algorithm based on rough set is first given to reduce the complexity of massive and high dimensional data. And then, based on feature selection, the authors propose a data filtering function model mining algorithm by using gene expression programming (DFFM-FSGEP). Finally, to solve the data filter function model mining of the incremental dataset, they also present an incremental mining algorithm of the filtering function model based on functional fitting (IMFFM-FF). Experimental results show that the proposed algorithm in this study can greatly reduce the complexity of experimental datasets to be processed, and compared with the other algorithms, DFFM-FSGEP has higher classification accuracy and sensitivity, and IMFFM-FF has higher classification speed and classification accuracy for incremental datasets.https://digital-library.theiet.org/content/journals/10.1049/iet-cps.2019.0094data miningsecurity of datamassive datahigh dimensional datadata filtering function modelfunction model miningincremental datasetincremental mining algorithmdata filter function incremental miningactive distribution networktraditional distributed networkscomplex access environmentflexible access modemassive access terminalgreat security challengesdata transmissionexisting data security methodsaccess controlnontext datafeature selection algorithm
collection DOAJ
language English
format Article
sources DOAJ
author Song Deng
Qingyuan Cai
Zi Zhang
Lechan Yang
Tinglei Huang
Changan Yuan
spellingShingle Song Deng
Qingyuan Cai
Zi Zhang
Lechan Yang
Tinglei Huang
Changan Yuan
Data filter function incremental mining based on feature selection in an active distribution network
IET Cyber-Physical Systems
data mining
security of data
massive data
high dimensional data
data filtering function model
function model mining
incremental dataset
incremental mining algorithm
data filter function incremental mining
active distribution network
traditional distributed networks
complex access environment
flexible access mode
massive access terminal
great security challenges
data transmission
existing data security methods
access control
nontext data
feature selection algorithm
author_facet Song Deng
Qingyuan Cai
Zi Zhang
Lechan Yang
Tinglei Huang
Changan Yuan
author_sort Song Deng
title Data filter function incremental mining based on feature selection in an active distribution network
title_short Data filter function incremental mining based on feature selection in an active distribution network
title_full Data filter function incremental mining based on feature selection in an active distribution network
title_fullStr Data filter function incremental mining based on feature selection in an active distribution network
title_full_unstemmed Data filter function incremental mining based on feature selection in an active distribution network
title_sort data filter function incremental mining based on feature selection in an active distribution network
publisher Wiley
series IET Cyber-Physical Systems
issn 2398-3396
publishDate 2020-04-01
description Compared with traditional distributed networks, the complex access environment, flexible access mode, massive access terminal, and data in an active distribution network will bring great security challenges to data transmission. The existing data security methods, such as access control and encryption, address the security of massive, high dimensional, and non-text data in the active distribution network. Therefore, feature selection algorithm based on rough set is first given to reduce the complexity of massive and high dimensional data. And then, based on feature selection, the authors propose a data filtering function model mining algorithm by using gene expression programming (DFFM-FSGEP). Finally, to solve the data filter function model mining of the incremental dataset, they also present an incremental mining algorithm of the filtering function model based on functional fitting (IMFFM-FF). Experimental results show that the proposed algorithm in this study can greatly reduce the complexity of experimental datasets to be processed, and compared with the other algorithms, DFFM-FSGEP has higher classification accuracy and sensitivity, and IMFFM-FF has higher classification speed and classification accuracy for incremental datasets.
topic data mining
security of data
massive data
high dimensional data
data filtering function model
function model mining
incremental dataset
incremental mining algorithm
data filter function incremental mining
active distribution network
traditional distributed networks
complex access environment
flexible access mode
massive access terminal
great security challenges
data transmission
existing data security methods
access control
nontext data
feature selection algorithm
url https://digital-library.theiet.org/content/journals/10.1049/iet-cps.2019.0094
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AT lechanyang datafilterfunctionincrementalminingbasedonfeatureselectioninanactivedistributionnetwork
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