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Autonomic intelligent network sensor model for protection of critical infrastructure systems.

机译:自主智能网络传感器模型,用于保护关键基础设施系统。

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摘要

This dissertation examines the concepts and implementation of a network based autonomic cyber sensor framework. The research provides an answer to the need to protect Ethernet connected control systems, such as those found in critical infrastructures, from cyber assaults. A layered architecture, which utilizes computational intelligence techniques for learning and a multi-level communication scheme, is described. Genetic Algorithms, Neural Networks, Fuzzy logic, Clustering, passive network scanning and dynamic virtual honeypots are all integral methods of the presented work. The application of computational intelligence techniques provides heuristics for specific problems such as anomaly detection and rule creation. The framework integrates several of these techniques into a broader overall solution while shielding the complexity from the user.;Contributions of this dissertation include introduction of a multi-level architecture with a two-layer information communication scheme. This scheme segregates modifications of components from changing standards and centralizes the complexity of external messaging to a single component reducing implementation costs and the security exposure of the sensor. A process of automatic creation and dynamic updates to emulated network hosts is described. This process provides an independent view of attached devices without interfering with an operational network. A network anomaly recognition system based on data clustering and advanced fuzzy logic is presented. While traditional approaches improve false positives at the expense of false negatives, or vice versa, this approach enables improvement of both accuracy measurements simultaneously.;Two related algorithms for communication of network situational awareness are detailed. They bridge the semantic gap between identifying a binary anomaly value to communicating what it means to a human. The use of intrusion detection rules as a knowledge base for learning systems such as neural networks is introduced. This leverages the large set of existing knowledge represented by the static rules sets and makes the information available for anomaly behavior systems. Finally, the automatic creation of intrusion detection rules based upon network traffic identified by anomaly behavior systems is shown resulting in a reduction of human effort needed to create rules.
机译:本文研究了基于网络的自主网络传感器框架的概念和实现。该研究为保护以太网连接的控制系统(例如关键基础设施中的控制系统)免受网络攻击提供了答案。描述了利用计算智能技术进行学习和多层通信方案的分层体系结构。遗传算法,神经网络,模糊逻辑,聚类,被动网络扫描和动态虚拟蜜罐都是提出的工作不可或缺的方法。计算智能技术的应用为特定问题(例如异常检测和规则创建)提供了启发式方法。该框架将这些技术中的几种集成到一个更广泛的整体解决方案中,同时避免了用户的复杂性。本文的贡献包括引入具有两层信息通信方案的多层体系结构。该方案将组件的修改与不断变化的标准隔离开来,并将外部消息传递的复杂性集中到单个组件上,从而降低了实现成本和传感器的安全性。描述了自动创建和动态更新仿真网络主机的过程。此过程提供了所连接设备的独立视图,而不会干扰运行网络。提出了一种基于数据聚类和高级模糊逻辑的网络异常识别系统。传统方法虽然以假阴性为代价改善了假阳性,反之亦然,但这种方法可以同时提高两种准确性的度量标准。详细说明了两种有关网络态势感知通信的算法。它们弥补了识别二进制异常值与将其含义传达给人类之间的语义鸿沟。介绍了使用入侵检测规则作为学习系统(例如神经网络)的知识库。这利用了由静态规则集表示的大量现有知识,并使信息可用于异常行为系统。最后,显示了基于由异常行为系统标识的网络流量自动创建入侵检测规则的过程,从而减少了创建规则所需的人工。

著录项

  • 作者

    Vollmer, Denis Todd.;

  • 作者单位

    University of Idaho.;

  • 授予单位 University of Idaho.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 145 p.
  • 总页数 145
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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