Leveraging Artificial Intelligence of Things for Anomaly Detection in Advanced Metering Infrastructures

R. Ogu, C. Ikerionwu, I. I. Ayogu
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引用次数: 2

Abstract

The integration of more sensory and actuation components to the Smart Grid produces high volume of data. Consequently, this big data stretches the transmission, processing, and storage capabilities of the Smart Grid infrastructures. The vulnerability of advanced metering infrastructures (AMIs) is on the rise, as more devices are connected to the Internet these days. The aforementioned realities have continued to necessitate a debate on the future of cloud-centered artificial intelligence (AI) services for latency-sensitive user-centric IoT applications. It is rapidly becoming necessary to leverage on the applicability of EdgeAI directly on IoT sensory nodes involved in energy metering. This paper proposes the applicability of Artificial Intelligence situated on smart meter, to perform micro analytics at the edge of AMI networks: Artificial Intelligence of Things. Therefore, a functional AMI model based on IoT and EdgeAI is presented herein. Additionally, an integration architecture for the anticipated Smart Grid based on IoT and EdgeAI is presented. On implementation, the proposed model would provide high performance analytics and Edge computing capabilities to enable AMIs initiate instant data check at the source and relay relevant real-time data to the Utility through the Internet.
利用物联网人工智能在高级计量基础设施中进行异常检测
将更多的传感和驱动组件集成到智能电网中会产生大量数据。因此,这些大数据扩展了智能电网基础设施的传输、处理和存储能力。随着连接到互联网的设备越来越多,高级计量基础设施(ami)的脆弱性正在增加。上述现实继续需要就以云为中心的人工智能(AI)服务的未来进行辩论,以实现对延迟敏感的以用户为中心的物联网应用。利用EdgeAI直接应用于涉及能源计量的物联网感知节点正迅速成为必要。本文提出了位于智能电表上的人工智能的适用性,以在AMI网络的边缘执行微观分析:物联网人工智能。为此,本文提出了一种基于IoT和EdgeAI的功能性AMI模型。此外,还提出了一种基于物联网和EdgeAI的预期智能电网集成架构。在实施过程中,提议的模型将提供高性能分析和边缘计算能力,使ami能够在源头启动即时数据检查,并通过互联网将相关实时数据转发给公用事业公司。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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