利用自组织地图检测智能电网通信基础设施中的侵入性活动

Z. Baig, Saif Ahmad, S. M. Sait
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引用次数: 4

摘要

智能电网基础设施(SGI)为消费者提供可持续、负担得起和不间断的电力供应。SGI的通信基础设施很容易受到最近发现的几次恶意攻击。客户特定的电力读数通过中间设备(如智能电表和数据集中/聚合器)在SGI层次结构上从消费者设备传递到集中服务器。在本文中,我们通过定义和生成常规设备行为来模拟针对SGI家庭局域网的攻击。任何观察到的与定义的正常配置文件的偏离都被标记为恶意攻击。随后,我们提出了一种基于自组织映射(SOM)的方法来训练和测试集中式SGI设备,以使它们能够准确识别异常。所提出的方案能够检测消费者家庭中的异常读数,具有合理的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Intrusive Activity in the Smart Grid Communications Infrastructure Using Self-Organizing Maps
The Smart Grid Infrastructure (SGI) provides for sustainable, affordable and uninterrupted electricity supply to consumers. The communications infrastructure of the SGI is prone to several malicious attacks identified in the recent past. Customer-specific electricity readings are communicated up the SGI hierarchy from consumer devices to centralized servers through intermediary devices such as smart meters and data concentrators/aggregators. In this paper, we model the attacks against the home area network of the SGI, through definition and generation of routine device behaviors. Any observed deviation from the defined normal profile is labeled as a malicious attack. Subsequently, we propose a Self-Organizing Map (SOM)-based approach towards training and testing of centralized SGI devices to qualify them for identifying anomalies accurately. The proposed scheme is capable of detecting anomalous readings within a consumer's household, with reasonable accuracies.
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