Assessing Industrial Control System Attack Datasets for Intrusion Detection

Xuelei Wang, Ernest Foo
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引用次数: 4

Abstract

With the rapid development of networks and computers, industrial control systems (ICS) have become more interconnected. Many ICS are allowed remote interactions through the Internet. This increases the security risks of being attacked. If critical infrastructure ICS are attacked, the consequences could be catastrophic. To protect the ICS, the anomaly-based network intrusion detection systems (ABNIDS) are used to detect novel cyber-attacks by learning both normal and abnormal network behaviours. The quality of the attack dataset directly influences the accuracy of the ABNIDS. Therefore, it is important to assess the quality of the attack datasets used to design and develop ABNIDS. To fulfil this goal, this paper provides assessment criteria for evaluating ICS attack datasets. These new assessment criteria demonstrate the various requirements of the dataset and analyse the effectiveness of the dataset in depth. Three existing ICS attack datasets for the DNP3, S7comm and Modbus protocols are assessed using these criteria. We find that there is a range of dataset creation techniques and levels of quality with no dataset that meets the ideal criteria. Since no existing work discusses assessment criteria for ICS attack datasets, this paper would be helpful to evaluate and improve the ICS attack datasets.
用于入侵检测的工业控制系统攻击数据集评估
随着网络和计算机的快速发展,工业控制系统的互联性越来越强。许多集成电路都允许通过Internet进行远程交互。这增加了被攻击的安全风险。如果关键基础设施ICS遭到攻击,后果可能是灾难性的。为了保护ICS,基于异常的网络入侵检测系统(ABNIDS)通过学习正常和异常的网络行为来检测新的网络攻击。攻击数据集的质量直接影响ABNIDS的准确性。因此,评估用于设计和开发ABNIDS的攻击数据集的质量非常重要。为了实现这一目标,本文提供了评估ICS攻击数据集的评估标准。这些新的评估标准展示了数据集的各种要求,并深入分析了数据集的有效性。使用这些标准对DNP3、S7comm和Modbus协议的三个现有ICS攻击数据集进行了评估。我们发现,在没有符合理想标准的数据集的情况下,存在一系列数据集创建技术和质量水平。由于目前还没有研究讨论ICS攻击数据集的评估标准,本文将有助于对ICS攻击数据集进行评估和改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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