物联网网络中基于混合啄木鸟交配和卷尾猴搜索优化算法的自动度量图神经网络入侵检测框架

Shanthi Govindaraju, Wilson Vimala Rani Vinisha, Francis H. Shajin, D. A. Sivasakthi
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引用次数: 1

摘要

入侵检测系统(ids)是安全网络的重要组成部分。由于网络数据量大,入侵对网络的误报和入侵检测的准确性是这些安全系统面临的问题。利用基于安全模型的物联网连接设备的可靠性来保护用户数据,防止设备参与恶意活动。在物联网网络(IDF - AGNN - HYB - WMA - CSOA - IoT)中,提出了基于混合啄木鸟交配和卷尾猴搜索优化算法的自动度量图神经网络入侵检测框架。首先从CSIC 2010数据集、ISCXIDS2012数据集等数据集中提取物联网数据中受影响的攻击,然后对这些数据进行预处理,利用改进的局部最小二乘随机森林提取特征,去除冗余信息。然后利用自度量图神经网络对恶意攻击和正常攻击进行分类。最后利用混合啄木鸟交配和卷尾猴搜索优化算法(Hyb - WMA - CSOA)对AGNN的权重参数进行优化。在ISCXIDS2012数据集上,与现有方法(IDF‐ANN‐IoT、IDF‐BMM‐IoT和IDF‐DNN‐IoT)相比,本文方法的准确率分别为25.37%、29.57%和18.67%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intrusion detection framework using auto‐metric graph neural network optimized with hybrid woodpecker mating and capuchin search optimization algorithm in IoT network
Intrusion detection systems (IDSs) are the major component of safe network. Due to the high volume of network data, the false alarm report of intrusion to the network and intrusion detection accuracy is the problem of these security systems. The reliability of Internet of Things (IoT) connected devices based on security model is employed to protect user data and preventing devices from engaging in malicious activity. In this article, intrusion detection framework using auto‐metric graph neural network optimized with hybrid woodpecker mating and capuchin search optimization algorithm in IoT Network (IDF‐AGNN‐HYB‐WMA‐CSOA‐ IoT) is proposed. Initially the attacks affected in the IoT data is taken from the dataset such as CSIC 2010 dataset, ISCXIDS2012 dataset, then these data are preprocessed and the features are extracted to remove the redundant information using improved random forest with local least squares. Then the malicious attacks and the normal attacks are classified using the auto‐metric graph neural network. At last hybrid woodpecker mating and capuchin search optimization algorithm (Hyb‐WMA‐CSOA) is utilized to optimize the weight parameters of AGNN. The performance of ISCXIDS2012 dataset of the proposed method shows higher accuracy 25.37%, 29.57%, and 18.67%, compared with existing methods, such as IDF‐ANN‐IoT, IDF‐BMM‐IoT and IDF‐DNN‐IoT respectively.
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