Multi-Feature Fusion in Graph Convolutional Networks for Data Network Propagation Path Tracing

Author:

Jing Dongsheng1,Yang Yu1ORCID,Gu Zhimin2,Feng Renjun1,Li Yan2,Jiang Haitao2

Affiliation:

1. State Grid Suzhou Power Supply Company, Suzhou 215000, China

2. Research Institute, State Grid Jiangsu Electric Power Co., Ltd., Nanjing 210000, China

Abstract

With the rapid development of information technology, the complexity of data networks is increasing, especially in electric power systems, where data security and privacy protection are of great importance. Throughout the entire distribution process of the supply chain, it is crucial to closely monitor the propagation paths and dynamics of electrical data to ensure security and quickly initiate comprehensive traceability investigations if any data tampering is detected. This research addresses the challenges of data network complexity and its impact on the security of power systems by proposing an innovative data network propagation path tracing model, which is constructed based on graph convolutional networks (GCNs) and the BERT model. Firstly, propagation trees are constructed based on the propagation structure, and the key attributes of data nodes are extracted and screened. Then, GCNs are utilized to learn the representation of node features with different attribute feature combinations in the propagation path graph, while the Bidirectional Encoder Representations from Transformers (BERT) model is employed to capture the deep semantic features of the original text content. The core of this research is to effectively integrate these two feature representations, namely the structural features obtained by GCNs and the semantic features obtained by the BERT model, in order to enhance the ability of the model to recognize the data propagation path. The experimental results demonstrate that this model performs well in power data propagation and tracing tasks, and the data recognition accuracy reaches 92.5%, which is significantly better than the existing schemes. This achievement not only improves the power system’s ability to cope with data security threats but also provides strong support for protecting data transmission security and privacy.

Funder

State Grid Jiangsu Electric Power Co., Ltd. Research Institute

Publisher

MDPI AG

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