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Securing Manufacturing Using Blockchain

机译:使用区块链保护制造

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摘要

Due to the rise of Industrial Control Systems (ICSs) cyber-attacks in the recent decade, various security frameworks have been designed for anomaly detection. While advanced ICS attacks use sequential phases to launch their final attacks, existing anomaly detection methods can only monitor a single source of data. However, analysis of multiple security data could provide more comprehensive and system-wide anomaly detection in industrial networks. In this paper, we present an anomaly detection framework for ICSs that consists of two stages: i) blockchain-based log management where the logs of ICS devices are collected in a secure and distributed manner, and ii) multi-source anomaly detection where the blockchain logs are analysed using multi-source deep learning which in turn provides a system wide anomaly detection method. We validated our framework using two ICS datasets: a factory automation dataset and a Secure Water Treatment (SWaT) dataset. These datasets contain physical and network level normal and abnormal traffic. The performance of our new framework is compared with single-source machine learning methods. The precision of our framework is 95% which is comparable with single-source anomaly detectors. However, multi-source analysis is more robust because it can detect anomalies from multiple sources simultaneously, while achieving comparable precision for each of the sources.
机译:由于工业控制系统(ICSS)网络攻击近十年来,各种安全框架设计用于异常检测。虽然高级ICS攻击使用顺序阶段来启动其最终攻击,但现有的异常检测方法只能监控单一数据源。然而,对多种安全数据的分析可以在工业网络中提供更全面和系统宽的异常检测。在本文中,我们提出了ICS中的异常检测框架,该框架包括两个阶段:1)基于blockchain日志管理,其中ICS设备的日志被收集在一个安全的和分布式的方式,以及ii)多源异常检测其中使用多源深度学习分析区块的日志,从而提供了一种系统宽异常检测方法。我们使用两个ICS数据集验证了我们的框架:工厂自动化数据集和安全的水处理(SWAT)数据集。这些数据集包含物理和网络级别正常和异常流量。我们的新框架的表现与单源机器学习方法进行比较。我们框架的精确度为95%,与单源异常探测器相当。然而,多源分析更加强大,因为它可以同时检测来自多个源的异常,同时为每个源代替相当的精度。

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