Industrial Intrusion Detection Classifier Pruning via Hybrid-order Difference of Weights Based on Poisson Distribution

IF 1.2 4区 计算机科学 Q4 AUTOMATION & CONTROL SYSTEMS
Xu Liu, Hongya Wang, Hai-ying Luan, Yong Yan, Yun Sha
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引用次数: 0

Abstract

: Pruning Techniques can greatly reduce the number of parameters and the computational load related to convolutional neural networks, which makes them suitable for edge industrial control systems with limited resources. However, they face the problem that the detection accuracy will be greatly reduced after pruning. Given the above, this paper proposes filter pruning via a technique called hybrid-order difference, which is based on Poisson distribution. According to this technique, some filters in each convolutional layer are removed, thus the number of parameters of the employed classifiers is highly reduced. The first-order and second-order difference for the L1-norm of filter parameters are calculated, they are given weights and they are converted into activity indices through the Min-Max function. The proposed method can fully explore the relationship between the weights and avoid the problem of threshold selection in pruning. Experiments were carried out on the LeNet-5, VGG16, ResNet18 and ResNet50 convolutional neural networks based on the 2019 Distributed Denial of Service dataset (the DDoS dataset) of the Canadian Institute for Cybersecurity, the 2014 experimental dataset of the Mississippi State University related to a natural gas pipeline (the gas dataset), and the dataset for an oil depot (the oil dataset). The results showed that the proposed method can effectively prune the employed intrusion detection classifiers, such as removing 83.74% of the Floating Point Operations (FLOPs) for VGG16 with only a 0.10% reduction of accuracy. As such, it greatly alleviates the load pressure generated by the above-mentioned classifiers in the context of edge industrial control systems.
基于泊松分布的混合阶权差的工业入侵检测分类器剪枝
:修剪技术可以大大减少卷积神经网络的参数数量和计算量,适用于资源有限的边缘工业控制系统。然而,他们面临的问题是,修剪后的检测精度会大大降低。鉴于此,本文提出了一种基于泊松分布的混合阶差分滤波剪枝技术。根据该技术,在每个卷积层中去除一些滤波器,从而大大减少了所使用分类器的参数数量。计算滤波器参数l1范数的一阶和二阶差分,赋予它们权重,并通过Min-Max函数将它们转化为活度指标。该方法充分挖掘了权值之间的关系,避免了剪枝过程中阈值选择的问题。基于加拿大网络安全研究所2019年分布式拒绝服务数据集(DDoS数据集)、密西西比州立大学2014年天然气管道相关实验数据集(gas数据集)和油库相关数据集(oil数据集),在LeNet-5、VGG16、ResNet18和ResNet50卷积神经网络上进行了实验。结果表明,该方法可以有效地对入侵检测分类器进行裁剪,去除了VGG16的83.74%的浮点运算(FLOPs),准确率仅降低0.10%。从而大大缓解了上述分类器在边缘工业控制系统环境下产生的负载压力。
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来源期刊
Studies in Informatics and Control
Studies in Informatics and Control AUTOMATION & CONTROL SYSTEMS-OPERATIONS RESEARCH & MANAGEMENT SCIENCE
CiteScore
2.70
自引率
25.00%
发文量
34
审稿时长
>12 weeks
期刊介绍: Studies in Informatics and Control journal provides important perspectives on topics relevant to Information Technology, with an emphasis on useful applications in the most important areas of IT. This journal is aimed at advanced practitioners and researchers in the field of IT and welcomes original contributions from scholars and professionals worldwide. SIC is published both in print and online by the National Institute for R&D in Informatics, ICI Bucharest. Abstracts, full text and graphics of all articles in the online version of SIC are identical to the print version of the Journal.
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