湖南电力 ›› 2026, Vol. 46 ›› Issue (3): 121-129.doi: 10.3969/j.issn.1008-0198.2026.03.016

• 电力人工智能与数字化 • 上一篇    下一篇

基于强化学习的电网数据中台异常判别与分类方法

蒋广1,2, 薛静远1,2, 胡翔1,2, 曹杰1,2, 方彬1,2   

  1. 1.国网湖南电力有限公司信息通信分公司,湖南 长沙 410004;
    2.泛在电力物联网湖南省重点实验室,湖南 长沙 410004
  • 收稿日期:2025-11-26 修回日期:2025-12-17 出版日期:2026-06-25 发布日期:2026-07-07
  • 通信作者: 蒋广(1996),男,硕士,研究方向为电力大数据应用。
  • 基金资助:
    国网湖南省电力有限公司科技项目(5216A623000W)

Anomaly Detection and Classification Methods for Power Grid Data Middle Platform Based on Reinforcement Learning

JIANG Guang1,2, XUE Jingyuan1,2, HU Xiang1,2, CAO Jie1,2, FANG Bin1,2   

  1. 1. Information and Communication Branch of State Grid Hunan Electric Power Company Limited, Changsha 410004, China;
    2. Hunan Provincial Key Laboratory of Internet of Things in Electricity, Changsha 410004, China
  • Received:2025-11-26 Revised:2025-12-17 Online:2026-06-25 Published:2026-07-07

摘要: 为提升电网数据中台运维处置效率,提出一种融合近端策略优化与多头自注意力机制的强化学习模型。模型对电网数据中台异常任务进行实时判别与分类,辅助现场运维人员快速定位异常原因,并针对性地进行异常处置。首先,通过门控循环单元网络实现时间序列依赖关系建模。其次,引入多头自注意力层来精准捕获局部显著性特征。随后,针对电网数据中台异常判别场景特点,设计混合激励函数,确保模型在判别已知异常分类和自主发现新异常分类方面均有较好性能。最后,依托某网省公司的数据中台实际运行数据进行效果验证。实验结果表明,模型总体异常分类准确率达到 98.2%,针对未知新异常类型判别的 F1 Score达到91.5%,显著优于其他基础模型。

关键词: 电网数据中台, 异常判别, 强化学习, 近端策略优化, 注意力机制

Abstract: To improve the efficiency of power grid data platform operation and maintenance, this paper proposes a reinforcement learning model that integrates proximal policy optimization and multi-head self-attention mechanism. This model aims to perform real-time identification and classification of anomalies in the power grid data platform, assisting on-site maintenance personnel in quickly locating the causes of anomalies and carrying out targeted anomaly handling. First, a gated recurrent unit network is used to model time-series dependencies. Second, a multi-head self-attention layer is introduced to accurately capture local saliency features. Then, considering the characteristics of anomaly identification scenarios in power grid data platforms, a hybrid activation function is designed to ensure good performance in both identifying known anomalies and autonomously discovering new anomaly types. Finally, the model's effectiveness is verified using actual operational data from a provincial power grid company's data middle platform. Experimental results show that the overall anomaly classification accuracy reaches 98.2%, and the F1 score for identifying unknown new anomaly types reaches 91.5%, significantly outperforming other comparative models.

Key words: power grid data middle platform, anomaly detection, reinforcement learning, proximal policy optimization, attention mechanism

中图分类号: