Energy providers are moving to the smart meter era, encouraging consumers to install, free of charge, these devices in their homes, automating consumption readings submission and making consumers life easier. However, the increased deployment of such smart devices brings a lot of security and privacy risks. In order to overcome such risks, Intrusion Detection Systems are presented as pertinent tools that can provide network-level protection for smart devices deployed in home environments. In this context, this paper is exploring the problems of Advanced Metering Infrastructures (AMI) and proposing a novel Machine Learning (ML) Intrusion Prevention System (IPS) to get optimal decisions based on a variety of factors and graphical security models able to tackle zero-day attacks.
翻译:能源供应商正在转向智能计量时代,鼓励消费者免费在家中安装这些装置,使消费读数提交自动化,使消费者生活更加容易;然而,增加使用这类智能装置带来了许多安全和隐私风险;为克服这些风险,入侵探测系统被介绍为相关工具,可为在家庭环境中部署的智能装置提供网络层面的保护;在此背景下,本文件正在探讨先进计量基础设施(AMI)的问题,并提出一个新的机器学习(ML)入侵预防系统(IPS),以便根据各种因素和能够应对零天攻击的图形安全模型做出最佳决定。