Real-time anomaly-based distributed intrusion detection systems for advanced Metering Infrastructure utilizing stream data mining

Fadwa Abdul Aziz Alseiari, Z. Aung
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引用次数: 33

Abstract

The advanced Metering Infrastructure (AMI) is one of the core components of smart grids' architecture. As AMI components are connected through mesh networks in a distributed mechanism, new vulnerabilities will be exploited by grid's attackers who intentionally interfere with network's communication system and steal customer data. As a result, identifying distributed security solutions to maintain the confidentiality, integrity, and availability of AMI devices' traffic is an essential requirement that needs to be taken into account. This paper proposes a real-time distributed intrusion detection system (DIDS) for the AMI infrastructure that utilizes stream data mining techniques and a multi-layer implementation approach. Using unsupervised online clustering techniques, the anomaly-based DIDS monitors the data flow in the AMI and distinguish if there are anomalous traffics. By comparing between online and offline clustering techniques, the experimental results showed that online clustering “Mini-Batch K-means” were successfully able to suit the architecture requirements by giving high detection rate and low false positive rates.
基于流数据挖掘的高级计量基础设施实时异常分布式入侵检测系统
高级计量基础设施(AMI)是智能电网体系结构的核心组成部分之一。由于AMI组件以分布式机制通过网状网络连接,网格攻击者会利用新的漏洞,故意干扰网络通信系统,窃取客户数据。因此,确定分布式安全解决方案以维护AMI设备流量的机密性、完整性和可用性是需要考虑的基本需求。本文提出了一种基于流数据挖掘技术和多层实现方法的实时分布式入侵检测系统(DIDS)。使用无监督在线聚类技术,基于异常的DIDS监控AMI中的数据流并区分是否存在异常流量。通过对在线聚类技术和离线聚类技术的比较,实验结果表明,在线聚类“Mini-Batch K-means”具有较高的检测率和较低的误报率,能够成功地满足体系结构的要求。
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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