Design of a SoC Architecture for the Edge Computing of NILM Techniques

Álvaro Hernández, Rubén Nieto, David Fuentes, J. Ureña
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引用次数: 6

Abstract

In recent years the development and deployment of commercial Smart Meters in most households in developed countries have spread the appearance of certain applications and methods, mainly related to the fields of Smart Grids and Internet of Things, where Non-Intrusive Load Monitoring (NILM) is one of the most well-known. It takes advantage of the capability of Smart Meters to acquire the electrical signals of a household or building in real time, in order to implement a set of techniques oriented to disaggregate the power consumption, according to the different electrical loads plugged in the facility. Previous works are often based on a cloud-computing approach, where samples are transferred straightforwardly from the local meter to the cloud for further analysis. This implies that the sampling rates are low in order to keep the required bandwidth reduced, thus constraining the final performance achieved in the load identification. This work presents the design of a System-on-Chip (SoC) architecture based on a Field-Programmable Gate Array (FPGA) device that can be installed locally at the input of the electrical installation from a house or building. It is able to manage data rates at high sampling frequencies and to implement in real time those algorithms proposed for the electrical signal processing and load classification. Experimental results have preliminary validated the proposed architecture.
面向NILM边缘计算技术的SoC架构设计
近年来,发达国家商用智能电表的发展和在大多数家庭中的部署,已经传播了一些应用和方法的出现,主要涉及智能电网和物联网领域,其中非侵入式负荷监测(NILM)最为人所知。它利用智能电表的功能实时获取家庭或建筑物的电信号,以便根据插入设备的不同电力负荷实施一套面向分解功耗的技术。以前的工作通常基于云计算方法,其中样品直接从本地仪表转移到云端进行进一步分析。这意味着采样率较低,以保持所需的带宽减少,从而限制了在负载识别中实现的最终性能。这项工作提出了基于现场可编程门阵列(FPGA)设备的片上系统(SoC)架构的设计,该设备可以安装在房屋或建筑物电气装置的本地输入处。它能够在高采样频率下管理数据速率,并实时实现用于电信号处理和负载分类的算法。实验结果初步验证了所提出的结构。
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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