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A Novel RNN-GBRBM Based Feature Decoder for Anomaly Detection Technology in Industrial Control Network

机译:一种基于RNN-GBRBM的新颖特征解码器,用于工业控制网络中的异常检测技术

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As advances in networking technology help to connect industrial control networks with the Internet, the threat from spammers, attackers and criminal enterprises has also grown accordingly. However, traditional Network Intrusion Detection System makes significant use of pattern matching to identify malicious behaviors and have bad performance on detecting zero-day exploits in which a new attack is employed. In this paper, a novel method of anomaly detection in industrial control network is proposed based on RNN-GBRBM feature decoder. The method employ network packets and extract high-quality features from raw features which is selected manually. A modified RNN-RBM is trained using the normal traffic in order to learn feature patterns of the normal network behaviors. Then the test traffic is analyzed against the learned normal feature pattern by using osPCA to measure the extent to which the test traffic resembles the learned feature pattern. Moreover, we design a semi-supervised incremental updating algorithm in order to improve the performance of the model continuously. Experiments show that our method is more efficient in anomaly detection than other traditional approaches for industrial control network.
机译:随着网络技术的进步帮助将工业控制网络与Internet连接,垃圾邮件发送者,攻击者和犯罪企业的威胁也相应增加。但是,传统的网络入侵检测系统大量使用模式匹配来识别恶意行为,并且在检测采用新攻击的零时差攻击方面表现不佳。提出了一种基于RNN-GBRBM特征解码器的工业控制网络异常检测新方法。该方法利用网络分组并从手动选择的原始特征中提取高质量特征。修改后的RNN-RBM使用正常流量进行训练,以了解正常网络行为的特征模式。然后,通过使用osPCA来衡量测试流量与学习的正常特征模式的相似程度,从而根据学习到的正常特征模式对测试流量进行分析。此外,我们设计了一种半监督的增量更新算法,以不断提高模型的性能。实验表明,与其他传统的工业控制网络方法相比,我们的方法在异常检测方面更有效。

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