Recommendation Method of Power Knowledge Retrieval Based on Graph Neural Network

Author:

Hou Rongxu1,Zhang Yiying2,Ou Qinghai3,Li Siwei3,He Yeshen4,Wang Hongjiang1,Zhou Zhenliu1

Affiliation:

1. College of Information Shenyang Institute of Engineeringy, Shenyang 110135, China

2. College of Artificial Intelligence, Tianjin University of Science & Technology, Tianjin 300457, China

3. Beijing Zhongdian Feihua Communication Co., Ltd., Beijing 100070, China

4. China Cridcom Co., Ltd., Shenzhen 518109, China

Abstract

With the development of the digital and intelligent transformation of the power grid, the structure and operation and maintenance technology of the power grid are constantly updated, which leads to problems such as difficulties in information acquisition and screening. Therefore, we propose a recommendation method for power knowledge retrieval based on a graph neural network (RPKR-GNN). The method first uses a graph neural network to learn the network structure information of the power fault knowledge graph and realize the deep semantic embedding of power entities and relations. After this, it fuses the power knowledge graph paths to mine the potential power entity relationships and completes the power fault knowledge graph through knowledge inference. At the same time, we combine the user retrieval behavior features for knowledge aggregation to form a personal subgraph, and we analyze the user retrieval subgraph by matching the similarity of retrieval keyword features. Finally, we form a fusion subgraph based on the subgraph topology and reorder the entities of the subgraph to generate a recommendation list for the target users for the prediction of user retrieval intention. Through experimental comparison with various classical models, the results show that the models have a certain generalization ability in knowledge inference. The method performs well in terms of the MR and Hit@10 indexes on each dataset, and the F1 value can reach 87.3 in the retrieval recommendation effect, which effectively enhances the automated operation and maintenance capability of the power system.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

Reference43 articles.

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