Personalized lightweight distributed network intrusion detection system in fog computing

With the continuous development of Internet of Things (IoT) technology, there is a constant emergency of new IoT applications with low latency, high dynamics, and large bandwidth requirements.This has led to the widespread aggregation of massive devices and information at the network edge, promoting...

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Main Authors: Tianpeng YE, Xiang LIN, Jianhua LI, Xuankai ZHANG, Liwen XU
Format: Article
Language:English
Published: POSTS&TELECOM PRESS Co., LTD 2023-06-01
Series:网络与信息安全学报
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Online Access:http://www.cjnis.com.cn/thesisDetails#10.11959/j.issn.2096-109x.2023035
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author Tianpeng YE
Xiang LIN
Jianhua LI
Xuankai ZHANG
Liwen XU
author_facet Tianpeng YE
Xiang LIN
Jianhua LI
Xuankai ZHANG
Liwen XU
author_sort Tianpeng YE
collection DOAJ
description With the continuous development of Internet of Things (IoT) technology, there is a constant emergency of new IoT applications with low latency, high dynamics, and large bandwidth requirements.This has led to the widespread aggregation of massive devices and information at the network edge, promoting the emergence and deep development of fog computing architecture.However, with the widespread and in-depth application of fog computing architecture, the distributed network security architecture deployed to ensure its security is facing critical challenges brought by fog computing itself, such as the limitations of fog computing node computing and network communication resources, and the high dynamics of fog computing applications, which limit the edge deployment of complex network intrusion detection algorithms.To effectively solve the above problems, a personalized lightweight distributed network intrusion detection system (PLD-NIDS) was proposed based on the fog computing architecture.A large-scale complex network flow intrusion detection model was trained based on the convolutional neural network architecture, and furthermore the network traffic type distribution of each fog computing node was collected.The personalized model distillation algorithm and the weighted first-order Taylor approximation pruning algorithm were proposed to quickly compress the complex model, breaking through the limitation of traditional model compression algorithms that can only provide single compressed models for edge node deployment due to the high compression calculation overhead when facing a large number of personalized nodes.According to experimental results, the proposed PLD-NIDS architecture can achieve fast personalized compression of edge intrusion detection models.Compared with traditional model pruning algorithms, the proposed architecture achieves a good balance between computational loss and model accuracy.In terms of model accuracy, the proposed weighted first-order Taylor approximation pruning algorithm can achieve about 4% model compression ratio improvement under the same 0.2% model accuracy loss condition compared with the traditional first-order Taylor approximation pruning algorithm.
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institution Kabale University
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publisher POSTS&TELECOM PRESS Co., LTD
record_format Article
series 网络与信息安全学报
spelling doaj-art-58e76def3f1143bbb78bd93a37a7c66e2025-01-15T03:16:34ZengPOSTS&TELECOM PRESS Co., LTD网络与信息安全学报2096-109X2023-06-019283759577790Personalized lightweight distributed network intrusion detection system in fog computingTianpeng YEXiang LINJianhua LIXuankai ZHANGLiwen XUWith the continuous development of Internet of Things (IoT) technology, there is a constant emergency of new IoT applications with low latency, high dynamics, and large bandwidth requirements.This has led to the widespread aggregation of massive devices and information at the network edge, promoting the emergence and deep development of fog computing architecture.However, with the widespread and in-depth application of fog computing architecture, the distributed network security architecture deployed to ensure its security is facing critical challenges brought by fog computing itself, such as the limitations of fog computing node computing and network communication resources, and the high dynamics of fog computing applications, which limit the edge deployment of complex network intrusion detection algorithms.To effectively solve the above problems, a personalized lightweight distributed network intrusion detection system (PLD-NIDS) was proposed based on the fog computing architecture.A large-scale complex network flow intrusion detection model was trained based on the convolutional neural network architecture, and furthermore the network traffic type distribution of each fog computing node was collected.The personalized model distillation algorithm and the weighted first-order Taylor approximation pruning algorithm were proposed to quickly compress the complex model, breaking through the limitation of traditional model compression algorithms that can only provide single compressed models for edge node deployment due to the high compression calculation overhead when facing a large number of personalized nodes.According to experimental results, the proposed PLD-NIDS architecture can achieve fast personalized compression of edge intrusion detection models.Compared with traditional model pruning algorithms, the proposed architecture achieves a good balance between computational loss and model accuracy.In terms of model accuracy, the proposed weighted first-order Taylor approximation pruning algorithm can achieve about 4% model compression ratio improvement under the same 0.2% model accuracy loss condition compared with the traditional first-order Taylor approximation pruning algorithm.http://www.cjnis.com.cn/thesisDetails#10.11959/j.issn.2096-109x.2023035intrusion detectionfog computingmodel compressiondistributed system
spellingShingle Tianpeng YE
Xiang LIN
Jianhua LI
Xuankai ZHANG
Liwen XU
Personalized lightweight distributed network intrusion detection system in fog computing
网络与信息安全学报
intrusion detection
fog computing
model compression
distributed system
title Personalized lightweight distributed network intrusion detection system in fog computing
title_full Personalized lightweight distributed network intrusion detection system in fog computing
title_fullStr Personalized lightweight distributed network intrusion detection system in fog computing
title_full_unstemmed Personalized lightweight distributed network intrusion detection system in fog computing
title_short Personalized lightweight distributed network intrusion detection system in fog computing
title_sort personalized lightweight distributed network intrusion detection system in fog computing
topic intrusion detection
fog computing
model compression
distributed system
url http://www.cjnis.com.cn/thesisDetails#10.11959/j.issn.2096-109x.2023035
work_keys_str_mv AT tianpengye personalizedlightweightdistributednetworkintrusiondetectionsysteminfogcomputing
AT xianglin personalizedlightweightdistributednetworkintrusiondetectionsysteminfogcomputing
AT jianhuali personalizedlightweightdistributednetworkintrusiondetectionsysteminfogcomputing
AT xuankaizhang personalizedlightweightdistributednetworkintrusiondetectionsysteminfogcomputing
AT liwenxu personalizedlightweightdistributednetworkintrusiondetectionsysteminfogcomputing