Increased dependence on networked, software based control has escalated the vulnerabilities of Cyber Physical Systems (CPSs). Detection and monitoring components developed leveraging dynamical systems theory are often employed as lightweight security measures for protecting such safety critical CPSs against false data injection attacks. However, existing approaches do not correlate attack scenarios with parameters of detection systems. In the present work, we propose a Reinforcement Learning (RL) based framework which adaptively sets the parameters of such detectors based on experience learned from attack scenarios, maximizing detection rate and minimizing false alarms in the process while attempting performance preserving control actions.
翻译:日益依赖网络化的软件控制加剧了网络物理系统的脆弱性,利用动态系统理论开发的检测和监测组件往往被用作保护这些关键的CPS安全免遭虚假数据注入攻击的轻量级安全措施,但是,现有办法与探测系统的参数没有关联,在目前的工作中,我们提议一个基于强化学习的框架,根据从攻击情景中取得的经验,根据适应性地确定这类探测器的参数,最大限度地提高探测率,并在过程中尽量减少虚假警报,同时努力保持控制行动。