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Hardware-Performance-Counters-based anomaly detection in massively deployed smart industrial devices

机译:基于硬件性能计数的基于基于智能工业设备的异常检测

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Energy providers are massively deploying devices to manage distributed resources or equipment. These devices are used for example to manage the energy of smart factories efficiently or to monitor the infrastructure of smart-grids. By design, they typically exhibit homogeneous behavior, with similar software and hardware architecture. Unfortunately, these devices are also of interest to attackers aiming to develop botnets or compromise companies' security. This paper presents a new protection approach based on Hardware Performance Counters (HPC) to detect anomalies in massively deployed devices. These HPC are processed using outlier detection algorithms. Compared to existing solutions, we propose a lightweight approach based on a comparative analysis of devices' HPC without relying on the modeling of the software applications running on the devices. To assess the relevance and the effectiveness of the approach, a thorough experimental analysis is carried out in a representative industrial-type environment, sampling the data from 100 Raspberry Pi to simulate about 10,000 devices deployed simultaneously. The results show high detection and performance efficiency under different software profiles and attack payloads. Moreover, the calibration of the approach depends primarily on the hardware rather than the application software running on the devices. It should ease its deployment in an operational environment.
机译:能源提供者正在大量部署设备来管理分布式资源或设备。这些设备例如用于有效地管理智能工厂的能量或监控智能电网的基础设施。通过设计,它们通常具有同质行为,具有类似的软件和硬件架构。不幸的是,这些设备也有兴趣的是旨在开发僵尸网络或妥协公司的安全性的攻击者。本文介绍了一种基于硬件性能计数器(HPC)的新保护方法,以检测大型部署设备中的异常。使用异常检测算法处理这些HPC。与现有解决方案相比,我们提出了一种基于设备HPC的比较分析的轻量级方法,而无需依赖于设备上运行的软件应用程序的建模。为了评估该方法的相关性和有效性,在代表性工业型环境中进行了彻底的实验分析,从100个Raspberry PI采样数据以模拟同时部署的约10,000个设备。结果在不同的软件配置文件下显示出高的检测和性能效率和攻击有效载荷。此外,方法的校准主要取决于硬件,而不是在设备上运行的应用程序软件。它应该简化其部署在运营环境中。

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