工业控制系统异常检测不变量生成的系统框架

Cheng Feng, Venkata Reddy Palleti, A. Mathur, D. Chana
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引用次数: 85

摘要

工业控制系统(ICS)由集成的硬件和软件组件组成,用于监视和控制各种工业过程,通常部署在水处理厂、电网和天然气管道等关键基础设施中。与传统的IT系统不同,ICS中偏离正常操作的后果有可能对设备、环境甚至人类生命造成重大的物理损害。主动监控定义了ICS正常运行必须维护的物理条件的不变规则,提供了一种提高此类系统的安全性和可靠性的方法,通过这种方法可以实现对异常系统状态的早期检测,并允许采取及时的缓解措施,例如故障检查、系统关闭。通常,不变规则是由系统工程师在给定ICS构建的设计阶段预定义的。然而,这种人工密集的过程成本高昂,容易出错,而且在典型的复杂系统中,不是最优的。在本文中,我们提出了一个新的框架,该框架旨在使用几种机器学习和数据挖掘技术的组合,从ICS操作数据日志中包含的信息系统地生成不变规则。在两个现实世界的ICS测试平台上进行的实验证明了我们方法的有效性:一个配水系统和一个水处理厂。我们表明,我们的框架可以成功地推导出远大于手动定义的不变规则集,并且与系统工程师定义的不变规则以及ICS中常用的基于残差的异常检测模型相比,它们可以用于在异常检测方面提供显着改进。关键词:工业控制系统,异常检测,不变规则,机器学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Systematic Framework to Generate Invariants for Anomaly Detection in Industrial Control Systems
Industrial Control Systems (ICS) consisting of integrated hardware and software components designed to monitor and control a variety of industrial processes, are typically deployed in critical infrastructures such as water treatment plants, power grids and gas pipelines. Unlike conventional IT systems, the consequences of deviations from normal operation in ICS have the potential to cause significant physical damage to equipment, the environment and even human life. The active monitoring of invariant rules that define the physical conditions that must be maintained for the normal operation of ICS provides a means to improve the security and dependability of such systems by which early detection of anomalous system states may be achieved, allowing for timely mitigating actions – such as fault checking, system shutdown – to be taken. Generally, invariant rules are predefined by system engineers during the design phase of a given ICS build. However, this manually intensive process is costly, error-prone and, in typically complex systems, sub-optimal. In this paper we propose a novel framework that is designed to systematically generate invariant rules from information contained within ICS operational data logs, using a combination of several machine learning and data mining techniques. The effectiveness of our approach is demonstrated by experiments on two real world ICS testbeds: a water distribution system and a water treatment plant. We show that sets of invariant rules, far larger than those defined manually, can be successfully derived by our framework and that they may be used to deliver significant improvements in anomaly detection compared with the invariant rules defined by system engineers as well as the commonly used residual errorbased anomaly detection model for ICS. Keywords—industrial control systems, anomaly detection, invariant rules, machine learning.
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