RL-BAGS:智能电网风险评估工具

Y. Wadhawan, C. Neuman
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引用次数: 7

摘要

由于网络物理攻击日益频繁,智能电网等关键基础设施的安全问题备受关注。网络犯罪分子通过破坏网络基础设施来恶意控制物理过程。系统管理员的目标是发现智能电网功能中的漏洞,并在它们被破坏之前修补它们。不幸的是,有限的资源和巨大的攻击面使得很难决定在特定的系统状态下保护哪个功能。在本文中,我们通过提出一种工具来解决智能电网系统中的资源分配问题,即智能电网系统的强化学习-贝叶斯攻击图(RLBAGS),该工具为系统工程师提供了关于是否扫描或PATCH智能电网系统特定功能的定期计算最优策略的功能。RL-BAGS考虑系统的功能和网络架构,生成一个贝叶斯网络,代表系统的状态。RL-BAGS在生成的贝叶斯网络上实现了Q-Learning和SARSA学习两种强化学习算法来学习最优策略。RL-BAGS帮助系统管理员对智能电网系统的功能之一进行深入研究,建议采取有效措施扫描或修补系统组件。
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RL-BAGS: A Tool for Smart Grid Risk Assessment
The security of critical infrastructure such as Smart Grid is of significant concern because cyber-physical attacks are becoming a frequent occurrence. Cybercriminals compromise cyberinfrastructure to control physical processes maliciously. It is the system administrator's goal to find vulnerabilities in the smart grid functions and patch them before they are compromised. Unfortunately, limited resources and a large attack surface make it difficult to decide which function to protect in a particular system state. In this research paper, we tackle the problem of resource allocation in the smart grid system by proposing a tool, Reinforcement Learning-Bayesian Attack Graph for Smart Grid System (RLBAGS), which provides functionality to the system engineers to compute optimal policies on regular intervals about whether to SCAN or PATCH a particular function of the smart grid system. RL-BAGS considers functions and network architecture of the system to generate a Bayesian Network, which represents the state of the system. RL-BAGS implements two reinforcement learning algorithms, Q-Learning and SARSA learning, on the generated Bayesian Network to learn optimal policies. RL-BAGS assists system administrators performing in-depth studies of one of the functions of the smart grid system advising effective actions to scan or patch a system component.
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