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Roll forward validation based decision tree classification for detecting data integrity attacks in industrial internet of things

机译:基于借鉴基于验证的决策树分类,用于检测工业互联网中的数据完整性攻击

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摘要

Data Integrity attack is a major hindrance to the evolution of Industrial Internet of Things (IIoT) as it leads to immense financial loss or even human fatality. The existing security features in Software Defined Networking (SDN), which is emphatically superior to the traditional networks mitigate the integrity attacks to some extent. However, a generic, robust, secure and resilient Intrusion Detection System (IDS) for IIoT is still lacking in the literature. Towards this goal, a generic IDS is already proposed in our earlier research work which combines both anomaly as well as rule-based intrusion detection techniques and successfully tested against the real-time dataset obtained from the water purification process in a test bed at the Singapore University of Technology and Design (SUTD). This research work proposes a supervised learning approach that utilizes Roll-forward technique for validation and Classification and Regression Trees (CART) with invariants for categorization to find anomalousness in the water treatment process. The proposed work incorporates the capability to substantiate time-series data through Roll-forward validation which is then succeeded by utilization of the CART with invariants for classification. The proposed work is simulated using Mininet tool and the train and test accuracies are 99.9% and 98.1% respectively.
机译:数据完整性攻击是工业互联网(IIOT)的演变的主要障碍,因为它导致巨大的经济损失甚至人类死亡。软件定义的网络(SDN)中的现有安全功能,它强调优于传统网络在一定程度上降低了完整性攻击。然而,在文献中仍然缺乏IIOT的通用,鲁棒,安全和有弹性的入侵检测系统(IDS)。在这一目标上,在我们之前的研究工作中已经提出了一种通用ID,其结合了异常以及基于规则的入侵检测技术,并成功地测试了在新加坡的试验台中的水净化过程中获得的实时数据集技术与设计大学(SUTD)。该研究工作提出了一种监督的学习方法,利用前源技术进行验证和分类和回归树(购物车),其不变量用于分类以在水处理过程中寻找异常性。所提出的工作纳入了通过升空验证来证实时间序列数据的能力,然后通过利用带有不变的分类的推车来成功。使用Mininet工具模拟所提出的工作,火车和测试精度分别为99.9%和98.1%。

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