Embedded Edge Computing for Real-time Smart Meter Data Analytics

T. Sirojan, S. Lu, B. Phung, E. Ambikairajah
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引用次数: 31

Abstract

As part of smart grid upgrades, traditional electricity meters are being replaced with smart meters that can improve accuracy, efficiency, and visibility in electrical energy consumption patterns and measurements. However, in most of the deployments, smart meters are only used to digitally measure the energy usage of consumer premises and transmit those data to the utility providers. Despite this, smart meter data can be leveraged into numerous potential applications such as demand side management and energy savings via consumer load identification and abnormality detection. Anyhow, these features are not enabled in most deployments due to high sampling rate requirements, lack of affordable communication bandwidth and resource constraints in analyzing a huge amount of data. This paper demonstrates the suitability of the embedded edge computing paradigm which not only enriches the functionalities but also overcome the limitations of smart meters. It achieves significant improvements in accuracy, latency and bandwidth requirement on smart grid applications via pushing the data analytics into the smart meters. Furthermore, this paper exposes the impact of sampling frequency and digitization resolution in the smart meter data analytics. The experiments are conducted using National Instruments (NI) embedded hardware and the results are reported.
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嵌入式边缘计算用于实时智能电表数据分析
作为智能电网升级的一部分,传统电表正在被智能电表所取代,智能电表可以提高电能消耗模式和测量的准确性、效率和可见性。然而,在大多数部署中,智能电表仅用于数字测量消费者住宅的能源使用情况,并将这些数据传输给公用事业提供商。尽管如此,智能电表数据可以被利用到许多潜在的应用中,比如通过用户负荷识别和异常检测来实现需求侧管理和节能。无论如何,由于高采样率要求、缺乏负担得起的通信带宽以及在分析大量数据时的资源限制,这些特性在大多数部署中都没有启用。本文论证了嵌入式边缘计算范式的适用性,它不仅丰富了智能电表的功能,而且克服了智能电表的局限性。它通过将数据分析推入智能电表,在智能电网应用的准确性,延迟和带宽要求方面取得了显着改善。此外,本文还揭示了采样频率和数字化分辨率对智能电表数据分析的影响。在美国国家仪器公司(NI)的嵌入式硬件上进行了实验,并报告了实验结果。
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