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Developing graphical detection techniques for maintaining state estimation integrity against false data injection attack in integrated electric cyber-physical system

机译:开发用于在集成电气网络物理系统中保持状态估计完整性的图形检测技术

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摘要

The merging of power grid, information, and communication technology promotes the intelligent development of smart grid, which is also more prone to cyber attack threats. Especially, the intelligently designed False Data Injection (FDI) attacks severely disturb the normal management and state estimation operations in power system. In this paper, the graphical detection technology which uses Graph Network (GN) is developed for detecting tampered measurements without external knowledge and manual preprocess of historical data. To solve the detection of FDI attacks location issue from the diversified dimensionality in power systems, the Capsule Network combined with GN is developed, which can extract preserve the detailed properties around each note such as location, direction, connection, etc. To evaluate the superior performance of proposed method, the proposed detection technology is carried out through standard IEEE 30-bus and IEEE 118-bus systems. The simulation results demonstrate that the proposed method can detect FDI attacks accurately with different attack sparsity and magnitude of disturbances.
机译:电网,信息和通信技术的合并促进了智能电网的智能发展,这也更容易发生网络攻击威胁。特别是,智能设计的假数据注入(FDI)攻击严重打扰电力系统中的正常管理和状态估计操作。在本文中,开发了使用曲线网络(GN)的图形检测技术,用于检测篡改测量而没有外部知识和历史数据的手动预处理。为了解决从电力系统中的多元化维度检测到FDI攻击位置问题,开发了胶囊网络与GN结合,可以提取围绕每个音符的详细特性,例如位置,方向,连接等。评估上级所提出的方法的性能,所提出的检测技术通过标准IEEE 30-BUR和IEEE 118总线系统进行。仿真结果表明,该方法可以用不同的攻击稀疏性和干扰幅度来准确地检测FDI攻击。

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