Multi-level Anomaly Detection in Industrial Control Systems via Package Signatures and LSTM Networks

Cheng Feng, Tingting Li, D. Chana
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引用次数: 154

Abstract

We outline an anomaly detection method for industrial control systems (ICS) that combines the analysis of network package contents that are transacted between ICS nodes and their time-series structure. Specifically, we take advantage of the predictable and regular nature of communication patterns that exist between so-called field devices in ICS networks. By observing a system for a period of time without the presence of anomalies we develop a base-line signature database for general packages. A Bloom filter is used to store the signature database which is then used for package content level anomaly detection. Furthermore, we approach time-series anomaly detection by proposing a stacked Long Short Term Memory (LSTM) network-based softmax classifier which learns to predict the most likely package signatures that are likely to occur given previously seen package traffic. Finally, by the inspection of a real dataset created from a gas pipeline SCADA system, we show that an anomaly detection scheme combining both approaches can achieve higher performance compared to various current state-of-the-art techniques.
基于包签名和LSTM网络的工业控制系统多级异常检测
我们概述了一种工业控制系统(ICS)的异常检测方法,该方法结合了对ICS节点之间处理的网络包内容及其时间序列结构的分析。具体来说,我们利用了ICS网络中所谓的现场设备之间存在的通信模式的可预测性和规律性。通过观察一个系统一段时间没有异常的存在,我们开发了一个一般包的基线特征数据库。布隆过滤器用于存储特征库,然后用于包内容级异常检测。此外,我们通过提出一种基于堆叠长短期记忆(LSTM)网络的softmax分类器来处理时间序列异常检测,该分类器学习预测最可能发生的数据包签名,这些签名可能是给定先前看到的数据包流量的。最后,通过对天然气管道SCADA系统创建的真实数据集的检查,我们表明,与当前各种最先进的技术相比,结合这两种方法的异常检测方案可以实现更高的性能。
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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