Non-Intrusive Load Decomposition Based on Graph Convolutional Network

Yuan Jie, Qiu Yajuan, Wang Lihui, Liu Yu
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Abstract

Demand-side power management and energy efficiency analysis are crucial to reducing energy consumption and improving power efficiency. Non-intrusive load decomposition is one of the important links to improve demand-side power management and energy efficiency analysis. In view of the fact that most of the current non-intrusive load decomposition methods focus on the analysis of traditional load characteristics and the optimization of algorithms, and lack of sufficient mining of user’s electricity behavior habits, a nonintrusive load decomposition model based on graph convolutional network (GCN) is proposed. The model firstly constructs the power sequence into graph data as network input based on the spectral graph theory, using the time characteristics extracted from the user’s electricity behavior habits. Then, based on the graph convolutional neural network, the power attribute features of each electrical appliance and its time-related structural features are extracted to achieve non-intrusive load decomposition. Specifically, it has a total of five layers of structure, including four layers of graph convolution layer and one layer of graph pooling layer. The ReLu activation function is used to improve the nonlinear expression, the dropout and L2 regularization measures are used to alleviate overfitting, and the bath size is used to improve the training speed. AMPds2 dataset is used for experimental testing. The experimental results show that the proposed decomposition model can accurately detect the switches of electrical appliances, and achieve better decomposition and effective tracking of the power of each electrical appliance.
基于图卷积网络的非侵入式负荷分解
需求侧电力管理和能源效率分析对于降低能源消耗和提高电力效率至关重要。非侵入式负荷分解是改善需求侧电力管理和能效分析的重要环节之一。针对目前大多数非侵入式负荷分解方法侧重于传统负荷特性分析和算法优化,缺乏对用户用电行为习惯的充分挖掘的问题,提出了一种基于图卷积网络(GCN)的非侵入式负荷分解模型。该模型首先利用从用户用电行为习惯中提取的时间特征,基于谱图理论将电力序列构建为图数据作为网络输入;然后,基于图卷积神经网络提取各电器的功率属性特征及其与时间相关的结构特征,实现非侵入式负荷分解;具体来说,它共有五层结构,包括四层图卷积层和一层图池化层。采用ReLu激活函数改进非线性表达式,采用dropout和L2正则化措施缓解过拟合,采用浴池大小提高训练速度。使用AMPds2数据集进行实验测试。实验结果表明,所提出的分解模型能够准确地检测到电器开关,实现对各电器功率的较好分解和有效跟踪。
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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