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INTRUSION DETECTION METHOD FOR INDUSTRIAL CONTROL SYSTEMS USING SINGULAR SPECTRUM ANALYSIS

机译:基于奇异谱分析的工业控制系统入侵检测方法

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Because of their automated processing capabilities, industrial control systems (ICSs) currently play a crucial role in plant operations. It was not long before ICS had been completely insulated from the Internet. However, because of the improved reliability of ICS devices and systems, we could find only a few plants that did not use ICS in conjunction with the Internet. As a result, the extended accessibility of almost every ICS component makes such systems vulnerable to cyber-attacks. Because of this, intrusion detection systems, which monitor ICS network traffic and detect suspicious activities within the components themselves, are extremely important. Previous studies argued that packet intervals could ideally be regarded as indicators of the hazardous status of ICSs against hacking activities, and proposed intrusion detection methodologies relying solely on packet intervals. However, these methodologies with supervised machine-learning have inevitably been compromised by cyber-attacks whose characteristics are different than those of the training dataset. We hypothesize that packet intervals in an ICS network used for automated industrial processes, which are forced to produce a certain type of periodicity, reflect a particular type of packet interval patterns. In other words, certain anomalous behaviors never fail to interfere with this pattern. This paper proposes an intrusion detection method using a singular spectrum analysis to monitor time series packets. We evaluated our proposed method on our cybersecurity testbed using penetration tests. The results verified the validity of our system realized in the packet interval periodicity. Furthermore, we examined the optimum parameter set for the singular spectrum analysis in the proposed method. From this experiment, we successfully designated criteria for the parameter-set based on the period of the packet intervals during normal operations. The proposed method successfully detected all three types of attacks within 4 sec, without producing a false alert during normal operations.
机译:由于其自动化处理能力,工业控制系统(ICS)当前在工厂运营中发挥着至关重要的作用。不久,ICS与互联网完全隔离。但是,由于ICS设备和系统的可靠性得到了提高,因此我们发现只有少数几家没有将ICS与Internet结合使用的工厂。结果,几乎每个ICS组件的扩展可访问性都使此类系统容易受到网络攻击。因此,入侵检测系统非常重要,它可以监视ICS网络流量并检测组件本身内的可疑活动。先前的研究认为,理想情况下,可以将数据包间隔视为ICS抵御黑客活动的危险状态的指标,并提出了仅依赖于数据包间隔的入侵检测方法。但是,这些受监督的机器学习方法不可避免地受到网络攻击的危害,其特征与训练数据集的特征不同。我们假设用于自动化工业过程的ICS网络中的数据包间隔被迫产生某种类型的周期性,从而反映了特定类型的数据包间隔模式。换句话说,某些异常行为永远不会干扰这种模式。本文提出了一种利用奇异频谱分析监测时间序列数据包的入侵检测方法。我们使用渗透测试在网络安全测试平台上评估了我们提出的方法。结果验证了我们的系统在分组间隔周期性中实现的有效性。此外,我们研究了所提出方法中奇异谱分析的最佳参数集。从该实验中,我们成功地根据正常操作期间数据包间隔的时间段为参数集指定了标准。所提出的方法可以在4秒钟内成功检测到所有三种类型的攻击,而在正常操作期间不会产生错误警报。

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