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Modeling, Analysis, and Mitigation of Dynamic Botnet Formation in Wireless IoT Networks

机译:无线物联网网络中动态僵尸网络形成的建模,分析和减轻

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The Internet of Things (IoT) relies heavily on wireless communication devices that are able to discover and interact with other wireless devices in their vicinity. The communication flexibility coupled with software vulnerabilities in devices, due to low cost and short time-to-market, exposes them to a high risk of malware infiltration. Malware may infect a large number of network devices using device-to-device (D2D) communication resulting in the formation of a botnet, i.e., a network of infected devices controlled by a common malware. A botmaster may exploit it to launch a network-wide attack sabotaging infrastructure and facilities, or for malicious purposes such as collecting ransom. In this paper, we propose an analytical model to study the D2D propagation of malware in wireless IoT networks. Leveraging tools from dynamic population processes and point process theory, we capture malware infiltration and coordination process over a network topology. The analysis of mean-field equilibrium in the population is used to construct and solve an optimization problem for the network defender to prevent botnet formation by patching devices while causing minimum overhead to network operation. The developed analytical model serves as a basis for assisting the planning, design, and defense of such networks from a defender's standpoint.
机译:事物互联网(物联网)严重依赖于能够发现和与其附近的其他无线设备进行互动的无线通信设备。由于低成本和短期上市的设备,通过设备中的软件漏洞耦合的通信灵活性使其暴露于恶意软件渗透的高风险。恶意软件可能使用设备到设备(D2D)通信感染大量网络设备,从而产生僵尸网络的形成,即由公共恶意软件控制的受感染设备的网络。 Botmaster可以利用它来推出网络范围的攻击破坏性基础设施和设施,或用于收集赎金等恶意目的。在本文中,我们提出了一个分析模型来研究无线物联网网络中恶意软件的D2D传播。利用动态人口流程和点流程理论的工具,我们通过网络拓扑捕获恶意软件渗透和协调过程。群体中平均场平衡分析用于构建并解决网络防御者的优化问题,以防止修补设备的僵尸网络形成,同时导致网络操作的最小开销。开发的分析模型是协助从后卫的角度来协助规划,设计和辩护这些网络的基础。

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