综合智慧能源 ›› 2026, Vol. 48 ›› Issue (2): 15-26.doi: 10.3969/j.issn.2097-0706.2026.02.002

• 人工智能赋能的运维与巡检 • 上一篇    下一篇

基于时空多视图学习的智能变电站远动终端不良数据恢复

徐嘉豪1(), 徐俊俊2,*()   

  1. 1.国网江苏省电力有限公司泰州供电分公司江苏 泰州 225300
    2.南京邮电大学 自动化学院南京 210023
  • 收稿日期:2025-10-15 修回日期:2026-01-14 出版日期:2026-02-25
  • 通讯作者: *徐俊俊(1990),男,副教授,博士,从事配电网态势感知与优化运行等方面的研究,jjxu@njupt.edu.cn
  • 作者简介:徐嘉豪(2002),男,从事电力系统自动化方面的研究,484382969@qq.com
  • 基金资助:
    国家自然科学基金项目(52107101)

Bad data recovery of smart substation remote terminal units based on spatio-temporal multi-view learning

XU Jiahao1(), XU Junjun2,*()   

  1. 1. Taizhou Power Supply Company of State Grid Jiangsu Electric Power Company LimitedTaizhou 225300, China
    2. College of AutomationNanjing University of Posts and TelecommunicationsNanjing 210023, China
  • Received:2025-10-15 Revised:2026-01-14 Published:2026-02-25
  • Supported by:
    National Natural Science Foundation of China(52107101)

摘要:

为解决智能变电站远动终端在虚假数据注入攻击(FDIA)下的数据安全问题,针对传统数据恢复方法忽略时空关联、依赖物理建模且对协同攻击鲁棒性不足的缺陷,提出了一种基于时空多视图学习的不良数据恢复策略,以提升电力系统状态感知的准确性与运行可靠性。建立了贴合变电站攻击特征的集中式FDIA模型,并构建了融合时间动态性、空间拓扑关联、特征交互与物理约束的四视图学习框架,通过注意力机制实现多源特征的自适应融合,最终完成被篡改数据的精准重构。设计的多场景仿真试验覆盖不同电气位置的关键节点及连续多节点攻击情形,验证所提方法在电压与功率量测重构误差上显著低于传统方法,极端攻击场景下仍能保持最优恢复精度和系统级物理一致性,有效提升了变电站量测数据的抗攻击能力与恢复可靠性,为构建韧性电网提供了关键技术支撑。

关键词: 智能变电站, 远动终端, 虚假数据注入攻击, 数据恢复, 时空多视图学习

Abstract:

To address the data security issues faced by remote terminal units in smart substations under false data injection attacks(FDIAs),a bad data recovery strategy based on spatio-temporal multi-view learning was proposed. This approach was designed to enhance the accuracy of situational awareness and operational reliability of power systems,with a focus on overcoming the limitations of traditional methods that ignore spatio-temporal correlations,rely heavily on physical modeling,and lack robustness against coordinated attacks. A centralized FDIA model fitting the attack characteristics of substations was established,followed by the construction of a four-view learning framework integrating temporal dynamics,spatial topological correlations,feature interactions,and physical constraints. By leveraging an attention mechanism,adaptive fusion of multi-source features was achieved to precisely reconstruct the tampered data. Furthermore,multi-scenario simulation experiments were designed,covering critical nodes at different electrical locations and continuous multi-node attack scenarios. Simulation results indicated that the reconstruction errors of the proposed method for voltage and power measurements were significantly lower than those of traditional methods. Additionally,the proposed strategy demonstrated the capability to maintain optimal recovery accuracy and system-level physical consistency,even under extreme attack scenarios. The proposed strategy effectively improves the attack resistance and recovery reliability of substation measurement data. Consequently,it can provide critical technical support for resilient power grids.

Key words: smart substation, remote terminal unit, false data injection attack, data recovery, spatio-temporal multi-view learning

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