高采样率NILM场景下神经网络的比较

Laura de Diego-Otón, Álvaro Hernández, Rubén Nieto, M. C. Pérez-Rubio
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引用次数: 1

摘要

用于确定家用电器使用情况的技术的共同目标与能源效率和减少能源消耗有关。此外,通过负荷监测,可以在最小程度侵犯隐私的情况下评估租户的独立程度,从而开发能够远程提供所需服务的可持续卫生系统。这两种方法都应该首先处理负载识别阶段。为此,本工作提出了三种不同的解决方案,采用高频获取的电流信号事件,并通过使用两种不同的人工神经网络(ANN)拓扑对其进行分类处理。提案中用作人工神经网络输入的感兴趣数据是围绕事件捕获的归一化信号,通过将该信号分成部分并将其组织在矩阵中创建的图像,以及来自事件周围信号的短时傅里叶变换(STFT)的图像。数据集BLUED用于对提案进行验证,其中一些提议的架构在超过15个分类设备中获得了90%以上的F1分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Neural Networks for High-Sampling Rate NILM Scenario
The common objective of techniques employed to identify the use of household appliances is related to energy efficiency and the reduction of energy consumption. In addition, through load monitoring it is possible to assess the degree of independence of tenants with minimal invasion of privacy and thus develop sustainable health systems capable of providing the required services remotely. Both approaches should initially deal with the load identification stage. For that purpose, this work presents three different solutions that take the events of the electrical current signal acquired at high frequency and process them for classification by using two different topologies of Artificial Neural Networks (ANN). The data of interest used as input for the ANN in the proposals are the normalized signal captured around the events, the images created by dividing that signal into sections and organizing them in a matrix, and the images coming from the Short Time Fourier Transform (STFT) of the signal around the event. The dataset BLUED is used to carry out the validation of the proposal, where some of the proposed architectures obtain an F1 score above 90 % for more than fifteen devices under classification.
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