Classification Method of Multi-State Appliances in Non-intrusive Load Monitoring Environment based on Gramian Angular Field

J. Seon, Youngghyu Sun, Soohyun Kim, Chanuk Kyeong, Is-sac Sim, Heung-Jea Lee, Jinyoung Kim
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引用次数: 2

Abstract

Non-intrusive load monitoring is a technology that can be used for predicting and classifying the type of appliances through real-time monitoring of user power consumption, and it has recently got interested as a means of energy-saving. In this paper, we propose a system for classifying appliances from user consumption data by combining GAF(Gramian angular field) technique that can be used for converting one-dimensional data to the two-dimensional matrix with convolutional neural networks. We use REDD(residential energy disaggregation dataset) that is the public appliances power data and confirm the classification accuracy of the GASF(Gramian angular summation field) and GADF(Gramian angular difference field). Simulation results show that both models showed 94% accuracy on appliances with binary-state(on/off) and that GASF showed 93.5% accuracy that is 3% higher than GADF on appliances with multi-state. In later studies, we plan to increase the dataset and optimize the model to improve accuracy and speed.
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基于Gramian角场的非侵入式负荷监测环境下多状态电器分类方法
非侵入式负荷监测是一种通过实时监测用户用电量来预测和分类电器类型的技术,近年来作为一种节能手段受到人们的关注。在本文中,我们提出了一种结合GAF(Gramian角场)技术从用户消费数据中分类电器的系统,该技术可用于将一维数据转换为卷积神经网络的二维矩阵。我们使用公共电器电力数据REDD(住宅能源分解数据集),并验证了GASF(格拉曼角和场)和GADF(格拉曼角差场)的分类准确性。仿真结果表明,两种模型在双状态(开/关)器具上的准确率均为94%,GASF在多状态器具上的准确率为93.5%,比GADF高3%。在后续的研究中,我们计划增加数据集并优化模型,以提高准确性和速度。
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