彭秉刚, 潘振宁, 余涛, 邱磊鑫, 苏晓, 陈镇煌. 图数据建模与图表示学习方法及其非侵入式负荷监测问题的应用[J]. 中国电机工程学报, 2022, 42(17): 6260-6273. DOI: 10.13334/j.0258-8013.pcsee.211116
引用本文: 彭秉刚, 潘振宁, 余涛, 邱磊鑫, 苏晓, 陈镇煌. 图数据建模与图表示学习方法及其非侵入式负荷监测问题的应用[J]. 中国电机工程学报, 2022, 42(17): 6260-6273. DOI: 10.13334/j.0258-8013.pcsee.211116
PENG Binggang, PAN Zhenning, YU Tao, QIU Leixin, SU Xiao, CHEN Zhenhuang. Graph Data Modeling and Graph Representation Learning Methods and Their Application in Non-intrusive Load Monitoring Problem[J]. Proceedings of the CSEE, 2022, 42(17): 6260-6273. DOI: 10.13334/j.0258-8013.pcsee.211116
Citation: PENG Binggang, PAN Zhenning, YU Tao, QIU Leixin, SU Xiao, CHEN Zhenhuang. Graph Data Modeling and Graph Representation Learning Methods and Their Application in Non-intrusive Load Monitoring Problem[J]. Proceedings of the CSEE, 2022, 42(17): 6260-6273. DOI: 10.13334/j.0258-8013.pcsee.211116

图数据建模与图表示学习方法及其非侵入式负荷监测问题的应用

Graph Data Modeling and Graph Representation Learning Methods and Their Application in Non-intrusive Load Monitoring Problem

  • 摘要: 非侵入式负荷分解能从家庭总表数据中分解出单个负荷的运行状态,这对用户调节自身用电策略、参与需求侧响应具有重要意义。针对当前负荷分解模型受限于欧式空间下数据的顺序输入,无法准确描述电器不同运行状态之间的时间关联性导致分解准确度不高的问题,提出一种图数据建模与图表示学习的非侵入式负荷分解方法。首先基于图理论将待分解信号转换为包含节点和边的图数据。其次,设计带残差机制的图卷积网络充分挖掘低采样频率下数据包含的属性特征和时间关联性特征,构建负荷分解的图表示学习。然后,针对模型分解结果缺乏精细化修正策略的问题提出改进的后处理方法,进而全面提升模型的综合性能。最后,使用公开数据集AMPds2和REDD进行验证,结果表明该文方法具有较低的分解误差和较强的泛化性能。

     

    Abstract: Non-intrusive load monitoring can extract the operating state of a single load from the main data of a building, which is of great significance for consumers to adjust their electricity strategies and participate in demand-side response. Existing methods are limited by the sequential input of data in the Euclidean space, and cannot accurately describe the time correlation between different operating states of electrical appliances, which leads to unsatisfactory disaggregation accuracy. Therefore, a novel method of graph data modeling and graph representation learning was proposed. Firstly, the signal to be disaggregated was converted into power graph containing nodes and edges based on graph theory. Secondly, a graph convolutional network with residual mechanism was designed to fully mine the attribute features and time correlation features contained in the data at low sampling frequency. Then, a graph representation learning for load disaggregation was developed. Furthermore, an improved post-processing technology was proposed to solve the problem of the lack of refined correction strategies for dis-aggregation results, thus improving the overall performance of the model. Finally, the proposed method was validated by using public datasets AMPds2 and REDD. The results show that the method has a lower disaggregation error and better generalization performance.

     

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