Multi-scale outlier mining algorithm for stateless communication data under IPv6 remote monitoring network

In order to accurately mine outliers and reduce the impact of outliers on communication data, a multi-scale outlier mining algorithm for stateless communication data in IPv6 remote monitoring network was investigated.The stateless communication data were obtained through an IPv6 remote monitoring ne...

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Main Authors: Kun LIU, Xiaohan ZHANG, Rukun CAO, Shuai LI
Format: Article
Language:zho
Published: Beijing Xintong Media Co., Ltd 2023-08-01
Series:Dianxin kexue
Subjects:
Online Access:http://www.telecomsci.com/zh/article/doi/10.11959/j.issn.1000-0801.2023149/
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author Kun LIU
Xiaohan ZHANG
Rukun CAO
Shuai LI
author_facet Kun LIU
Xiaohan ZHANG
Rukun CAO
Shuai LI
author_sort Kun LIU
collection DOAJ
description In order to accurately mine outliers and reduce the impact of outliers on communication data, a multi-scale outlier mining algorithm for stateless communication data in IPv6 remote monitoring network was investigated.The stateless communication data were obtained through an IPv6 remote monitoring network, and based on the seasonality, trend, and self-similarity characteristics of the extracted stateless communication data, the Fourier transform was used to divide the stateless communication data into two classes.Then, the K-mean method was used to cluster the two classes to determine the neighborhood of the stateless communication data, which was used as the basis for outlier mining using a convolutional neural network on the stateless communication data.The convolutional neural network was initialized, and according to the output value of the convolutional neural network, it was determined whether the network met the stopping condition.The operation steps of the convolutional neural network were repeated, all the outlier points were mined, and the multi-scale outlier mining of stateless communication data was achieved.The experimental results showed that the fewer the number of stateless communication data categories, the higher the mining efficiency; the proposed method can accurately mine the number of multiscale outliers of stateless communication data in IPv6 remote monitoring network and accurately analyze the reasons for the outliers.
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id doaj-art-d2296cb129254f19a2e6304f2b4340db
institution Kabale University
issn 1000-0801
language zho
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publisher Beijing Xintong Media Co., Ltd
record_format Article
series Dianxin kexue
spelling doaj-art-d2296cb129254f19a2e6304f2b4340db2025-01-15T02:58:20ZzhoBeijing Xintong Media Co., LtdDianxin kexue1000-08012023-08-013911812659562959Multi-scale outlier mining algorithm for stateless communication data under IPv6 remote monitoring networkKun LIUXiaohan ZHANGRukun CAOShuai LIIn order to accurately mine outliers and reduce the impact of outliers on communication data, a multi-scale outlier mining algorithm for stateless communication data in IPv6 remote monitoring network was investigated.The stateless communication data were obtained through an IPv6 remote monitoring network, and based on the seasonality, trend, and self-similarity characteristics of the extracted stateless communication data, the Fourier transform was used to divide the stateless communication data into two classes.Then, the K-mean method was used to cluster the two classes to determine the neighborhood of the stateless communication data, which was used as the basis for outlier mining using a convolutional neural network on the stateless communication data.The convolutional neural network was initialized, and according to the output value of the convolutional neural network, it was determined whether the network met the stopping condition.The operation steps of the convolutional neural network were repeated, all the outlier points were mined, and the multi-scale outlier mining of stateless communication data was achieved.The experimental results showed that the fewer the number of stateless communication data categories, the higher the mining efficiency; the proposed method can accurately mine the number of multiscale outliers of stateless communication data in IPv6 remote monitoring network and accurately analyze the reasons for the outliers.http://www.telecomsci.com/zh/article/doi/10.11959/j.issn.1000-0801.2023149/IPv6remote monitoring networkstatelesscommunication datamulti-scaleoutlier mining
spellingShingle Kun LIU
Xiaohan ZHANG
Rukun CAO
Shuai LI
Multi-scale outlier mining algorithm for stateless communication data under IPv6 remote monitoring network
Dianxin kexue
IPv6
remote monitoring network
stateless
communication data
multi-scale
outlier mining
title Multi-scale outlier mining algorithm for stateless communication data under IPv6 remote monitoring network
title_full Multi-scale outlier mining algorithm for stateless communication data under IPv6 remote monitoring network
title_fullStr Multi-scale outlier mining algorithm for stateless communication data under IPv6 remote monitoring network
title_full_unstemmed Multi-scale outlier mining algorithm for stateless communication data under IPv6 remote monitoring network
title_short Multi-scale outlier mining algorithm for stateless communication data under IPv6 remote monitoring network
title_sort multi scale outlier mining algorithm for stateless communication data under ipv6 remote monitoring network
topic IPv6
remote monitoring network
stateless
communication data
multi-scale
outlier mining
url http://www.telecomsci.com/zh/article/doi/10.11959/j.issn.1000-0801.2023149/
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AT xiaohanzhang multiscaleoutlierminingalgorithmforstatelesscommunicationdataunderipv6remotemonitoringnetwork
AT rukuncao multiscaleoutlierminingalgorithmforstatelesscommunicationdataunderipv6remotemonitoringnetwork
AT shuaili multiscaleoutlierminingalgorithmforstatelesscommunicationdataunderipv6remotemonitoringnetwork