基于快速序列分量分析的智能电网攻击检测

Jordan Landford, Rich Meier, Richard Barella, S. Wallace, Xinghui Zhao, E. C. Sanchez, R. Bass
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引用次数: 24

摘要

现代电力系统已经开始将同步相量技术集成到日常运行中。考虑到提供的解决方案的数量和应用程序开发的成熟度,这些技术在世界各地的控制中心变得无处不在不是“如果”的问题,而是“何时”的问题。虽然好处很多,但操作员级应用程序的功能很容易被注入伪装成真实测量值的欺骗性数据信号而失效。这种欺骗行为通常是邪恶的,通常是恶意活动的前兆。提出了一种相关系数表征和机器学习方法来检测和识别欺骗数据信号的注入。该方法利用电力系统参数固有的统计关系,将其量化并给出。已经开发了几种欺骗方案来定性和定量地演示检测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast sequence component analysis for attack detection in smart grid
Modern power systems have begun integrating synchrophasor technologies into part of daily operations. Given the amount of solutions offered and the maturity rate of application development it is not a matter of “if” but a matter of “when” in regards to these technologies becoming ubiquitous in control centers around the world. While the benefits are numerous, the functionality of operator-level applications can easily be nullified by injection of deceptive data signals disguised as genuine measurements. Such deceptive action is a common precursor to nefarious, often malicious activity. A correlation coefficient characterization and machine learning methodology are proposed to detect and identify injection of spoofed data signals. The proposed method utilizes statistical relationships intrinsic to power system parameters, which are quantified and presented. Several spoofing schemes have been developed to qualitatively and quantitatively demonstrate detection capabilities.
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