通过替代数据检测和缓解直流微电网集群中的虚假数据注入攻击

Sucheng Liu;Guanggan Hu;Mengyu Xia;Qianjin Zhang;Wei Fang;Xiaodong Liu
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引用次数: 0

摘要

直流微电网集群(DCMGCs)作为深度集成的网络物理系统,由多个直流微电网互联而成,利用分布式控制实现高可靠性和可扩展性的电力分配,进一步体现了基于分布式能源资源发电的优势。然而,DCMGCs 中控制代理之间通过分布式方式共享信息,使系统容易受到网络攻击。在各种网络攻击中,虚假数据注入攻击(FDIAs)可以被精心设计为隐形攻击,它可以在不表现出不稳定现象的情况下导致 DC-MGCs 的电源管理出错,甚至误导现有的检测方法做出错误判断。针对这一问题,本文提出了另一种基于数据的 FDIA 检测策略,以减轻攻击对 DCMGC 网络的影响。根据 DC-MGC 对攻击的不同反应,讨论了 FDIA 的分类条件。此外,通过选择替代通信数据,将核心检测问题转化为识别系统输出是否匹配,以规避复杂的建模。最后,在带有通用数字信号处理 (DSP) 控制器的 dSPACE™ MicroLabBox 平台上进行的硬件在环实验结果验证了所提出的策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and Mitigation via Alternative Data for False Data Injection Attacks in DC Microgrid Cluster
DC microgrid clusters (DCMGCs), as deeply integrated cyber-physical systems, are formed by interconnection of multiple DC microgrids, and use distributed control to achieve power distribution with high reliability and scalability, and further reflect advantages of distributed energy resources-based generations. However, sharing of information among control agents by distributed manner in the DCMGCs renders the systems vulnerable to cyber-attacks. Among various cyber-attacks, false data injection attacks (FDIAs) can be carefully designed as stealth attacks, which can cause errors in the power management of DC-MGCs without manifestation of instability phenomena and even mislead existing detection methods to make incorrect judgments. To address this issue, this paper presents an alternative data-based strategy to detect FDIAs and mitigate the impact of the attacks in cyber network of DCMGCs. The classification conditions of FDIAs are discussed according to the different responses of DC-MGCs to the attacks. Furthermore, the core detection problem is transformed into identifying whether the system outputs match by selecting alternative communication data to circumvent complex modeling. Finally, hardware-in-the-loop experimental results on the dSPACE™ MicroLabBox platform with universal digital signal processing (DSP) controllers validate the proposed strategy.
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