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Modeling, Analysis, and Efficient Resource Allocation in Cyber-Physical Systems and Critical Infrastructure Networks

机译:网络物理系统和关键基础架构网络中的建模,分析和有效的资源分配

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摘要

The critical infrastructures of the nation are a large and complex network of human, physical and cyber-physical systems. In recent times, it has become increasingly apparent that individual critical infrastructures, such as the power and communication networks, do not operate in isolation, but instead are part of a complex interdependent ecosystem where a failure involving a small set of network entities can trigger a cascading event resulting in the failure of a much larger set of entities through the failure propagation process.;Recognizing the need for a deeper understanding of the interdependent relationships between such critical infrastructures, several models have been proposed and analyzed in the last few years. However, most of these models are over-simplified and fail to capture the complex interdependencies that may exist between critical infrastructures. To overcome the limitations of existing models, this dissertation presents a new model -- the Implicative Interdependency Model (IIM) that is able to capture such complex interdependency relations. As the potential for a failure cascade in critical interdependent networks poses several risks that can jeopardize the nation, this dissertation explores relevant research problems in the interdependent power and communication networks using the proposed IIM and lays the foundations for further study using this model.;Apart from exploring problems in interdependent critical infrastructures, this dissertation also explores resource allocation techniques for environments enabled with cyber-physical systems. Specifically, the problem of efficient path planning for data collection using mobile cyber-physical systems is explored. Two such environments are considered: a Radio-Frequency IDentification (RFID) environment with mobile "Tags" and "Readers", and a sensor data collection environment where both the sensors and the data mules (data collectors) are mobile.;Finally, from an applied research perspective, this dissertation presents Raptor, an advanced network planning and management tool for mitigating the impact of spatially correlated, or region based faults on infrastructure networks. Raptor consolidates a wide range of studies conducted in the last few years on region based faults, and provides an interface for network planners, designers and operators to use the results of these studies for designing robust and resilient networks in the presence of spatially correlated faults.
机译:国家的关键基础设施是一个庞大而复杂的人,物理和网络物理系统网络。近年来,越来越明显的是,各个关键的基础架构(例如电源和通信网络)并不是孤立运行的,而是属于一个复杂的相互依赖的生态系统的一部分,在该生态系统中,涉及少量网络实体的故障会触发故障。级联事件通过故障传播过程导致大量实体的故障。认识到需要更深入地了解这种关键基础设施之间的相互依赖关系,最近几年已经提出并分析了几种模型。但是,大多数这些模型都过于简化,无法捕捉关键基础架构之间可能存在的复杂的相互依赖关系。为了克服现有模型的局限性,本文提出了一个新的模型-隐性依赖模型(IIM),它可以捕获这种复杂的依赖关系。由于关键的相互依存网络中发生级联故障的潜在风险可能危害国家,因此,本文使用IIM探索了相互依存的电力和通信网络中的相关研究问题,并为进一步研究该模型奠定了基础。从探讨相互依赖的关键基础设施中的问题开始,本文还探讨了针对具有网络物理系统的环境的资源分配技术。具体而言,探讨了使用移动网络物理系统进行数据收集的有效路径规划问题。考虑了两个这样的环境:带有移动“标签”和“读取器”的射频识别(RFID)环境,以及传感器和数据mu子(数据收集器)都是移动的传感器数据收集环境。从应用研究的角度出发,本文介绍了Raptor,这是一种先进的网络规划和管理工具,可减轻空间相关或基于区域的故障对基础设施网络的影响。 Raptor整合了过去几年对基于区域的故障进行的广泛研究,并为网络规划人员,设计人员和运营商提供了接口,以利用这些研究的结果在存在空间相关故障的情况下设计鲁棒而有弹性的网络。

著录项

  • 作者

    Das, Arun.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Computer science.;Systems science.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 127 p.
  • 总页数 127
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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