AttG-BDGNets: Attention-Guided Bidirectional Dynamic Graph IndRNN for Non-Intrusive Load Monitoring

Inf. Comput. Pub Date : 2023-07-04 DOI:10.3390/info14070383
Zuoxin Wang, Xiaohu Zhao
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Abstract

Most current non-intrusive load monitoring methods focus on traditional load characteristic analysis and algorithm optimization, lack knowledge of users’ electricity consumption behavior habits, and have poor accuracy. We propose a novel attention-guided bidirectional dynamic graph IndRNN approach. The method first extends sequence or multidimensional data to a topological graph structure. It effectively utilizes the global context by following an adaptive graph topology derived from each set of data content. Then, the bidirectional Graph IndRNN network (Graph IndRNN) encodes the aggregated signals into different graph nodes, which use node information transfer and aggregation based on the entropy measure, power attribute characteristics, and the time-related structural characteristics of the corresponding device signals. The function dynamically incorporates local and global contextual interactions from positive and negative directions to learn the neighboring node information for non-intrusive load decomposition. In addition, using the sequential attention mechanism as a guide while eliminating redundant information facilitates flexible reasoning and establishes good vertex relationships. Finally, we conducted experimental evaluations on multiple open source data, proving that the method has good robustness and accuracy.
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AttG-BDGNets:非侵入式负载监测的注意引导双向动态图IndRNN
目前大多数非侵入式负荷监测方法侧重于传统的负荷特性分析和算法优化,缺乏对用户用电行为习惯的了解,准确性较差。我们提出了一种新的注意引导双向动态图IndRNN方法。该方法首先将序列或多维数据扩展为拓扑图结构。它通过遵循从每组数据内容派生的自适应图拓扑,有效地利用了全局上下文。然后,双向图IndRNN网络(Graph IndRNN)将聚合后的信号编码到不同的图节点中,这些节点基于相应设备信号的熵测度、功率属性特征和时间相关结构特征进行节点信息传递和聚合。该函数动态地融合了本地和全局上下文的正向和负向交互,以学习邻近节点信息,实现非侵入式负载分解。此外,在消除冗余信息的同时,利用顺序注意机制作为指导,有利于灵活推理,建立良好的顶点关系。最后,我们对多个开源数据进行了实验评估,证明了该方法具有良好的鲁棒性和准确性。
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