基于强化学习和博弈论的网络物理安全框架,适用于与社会控制系统互动的人类

Yajuan Cao, Chenchen Tao
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引用次数: 0

摘要

在过去的二十年里,人们为信息技术驱动的智能电网开发了大量基础设施升级和算法,尤其是对其系统设计和实际实施的兴趣与日俱增。与此同时,在无处不在的智能电网环境中检测和防止入侵者的研究,因各种通信设备上可能存在接入点而受到极大的推动。因此,目前还没有全面的安全协议来防止恶意攻击者访问智能电网组件,从而使攻击者和系统操作者能够通过电网控制系统进行互动。最近,人们认为强化学习技术可以预测和解决延时交互的动态问题。与其他方法相比,该方法的优势在于,它提供了同时模拟多个人类连续互动特征的决策过程的机会,而不是指定单个代理的决策动态,并要求其他代理遵循特定的运动学和动态限制。这样,以机器为媒介的人机交互结果就取决于如何设计控制和物理系统。从技术上讲,可以通过模拟来设计专门的人在环社会控制系统,这种系统具有抗攻击性,可以通过预防性评估和可接受的准确性来预测这种结果。重要的是,要对控制系统和物理系统以及人类决策建立可靠的模型,以便做出可靠的假设。本研究提出了开发这些工具的方法,其中包括一个模拟网络物理入侵者对系统的攻击和操作员防御的模型,展示了此类框架设计的整体性能优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reinforcement learning and game theory based cyber-physical security framework for the humans interacting over societal control systems
A lot of infrastructure upgrade and algorithms have been developed for the information technology driven smart grids over the past twenty years, especially with increasing interest in their system design and real-world implementation. Meanwhile, the study of detecting and preventing intruders in ubiquitous smart grids environment is spurred significantly by the possibility of access points on various communication equipment. As a result, there are no comprehensive security protocols in place preventing from a malicious attacker’s accessing to smart grids components, which would enable the interaction of attackers and system operators through the power grid control system. Recently, dynamics of time-extended interactions are believed to be predicted and solved by reinforcement learning technology. As a descriptive advantage of the approach compared with other methods, it provides the opportunities of simultaneously modeling several human continuous interactions features for decision-making process, rather than specifying an individual agent’s decision dynamics and requiring others to follow specific kinematic and dynamic limitations. In this way, a machine-mediated human-human interaction’s result is determined by how control and physical systems are designed. Technically, it is possible to design dedicated human-in-the-loop societal control systems that are attack-resistant by using simulations that predict such results with preventive assessment and acceptable accuracy. It is important to have a reliable model of both the control and physical systems, as well as of human decision-making, to make reliable assumptions. This study presents such a method to develop these tools, which includes a model that simulates the attacks of a cyber-physical intruder on the system and the operator’s defense, demonstrating the overall performance benefit of such framework designs.
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