{"title":"虚假数据注入网络攻击的检测:实验室规模微电网的实验验证","authors":"E. Naderi, A. Asrari","doi":"10.1109/IGESSC55810.2022.9955337","DOIUrl":null,"url":null,"abstract":"Instantaneous monitoring of smart microgrids is a crucial task of system operators to ensure an acceptable level of security and reliability in the system. To this end, modern communication platforms are being introduced to facilitate the data exchange between field devices and microgrid control center (i.e., a cyber-physical power system). This is where an adversary can take advantage of the smart system to stealthy compromise the sensors’ readings in the cyber layer resulting in different operational issues, which can lead to cascading failures or blackout in extreme cases. As a step toward protecting modern power networks, this article proposes a detection approach, which is oriented toward recurrent neural networks (RNNs), against false data injection (FDI) cyberattacks targeting a lab-scale microgrid developed in Southern Illinois University, Carbondale, IL, USA. To significantly enhance the quality of obtained results in order to be adapted with realistic systems, the proposed framework (i.e., the FDI cyberattack and the RNN-based detection approach) is set up as a real-time digital simulator in the form of hardware-in-the-loop (HIL) testbed, which utilizes the physical components of the developed lab-scale microgrid. In this regard, the OP4510 HIL simulator is upgraded by a 16-channel Imperix Power Interface and a dual-port PCI-E X1 Gigabit Ethernet to perform the FDI attacks on the sensors’ readings. Moreover, the proposed detection framework is able to distinguish FDI attacks from other transient events (e.g., alteration in demand level). The experimental results demonstrate the effectiveness of the developed false data detection approach in different scenarios.","PeriodicalId":166147,"journal":{"name":"2022 IEEE Green Energy and Smart System Systems(IGESSC)","volume":"1 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2022-11-07","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"4","resultStr":"{\"title\":\"Detection of False Data Injection Cyberattacks: Experimental Validation on a Lab-scale Microgrid\",\"authors\":\"E. Naderi, A. Asrari\",\"doi\":\"10.1109/IGESSC55810.2022.9955337\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Instantaneous monitoring of smart microgrids is a crucial task of system operators to ensure an acceptable level of security and reliability in the system. To this end, modern communication platforms are being introduced to facilitate the data exchange between field devices and microgrid control center (i.e., a cyber-physical power system). This is where an adversary can take advantage of the smart system to stealthy compromise the sensors’ readings in the cyber layer resulting in different operational issues, which can lead to cascading failures or blackout in extreme cases. As a step toward protecting modern power networks, this article proposes a detection approach, which is oriented toward recurrent neural networks (RNNs), against false data injection (FDI) cyberattacks targeting a lab-scale microgrid developed in Southern Illinois University, Carbondale, IL, USA. To significantly enhance the quality of obtained results in order to be adapted with realistic systems, the proposed framework (i.e., the FDI cyberattack and the RNN-based detection approach) is set up as a real-time digital simulator in the form of hardware-in-the-loop (HIL) testbed, which utilizes the physical components of the developed lab-scale microgrid. In this regard, the OP4510 HIL simulator is upgraded by a 16-channel Imperix Power Interface and a dual-port PCI-E X1 Gigabit Ethernet to perform the FDI attacks on the sensors’ readings. Moreover, the proposed detection framework is able to distinguish FDI attacks from other transient events (e.g., alteration in demand level). 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引用次数: 4
摘要
智能微电网的实时监测是系统运营商确保系统达到可接受的安全性和可靠性水平的关键任务。为此,正在引入现代通信平台,以促进现场设备与微电网控制中心(即网络-物理电力系统)之间的数据交换。在这种情况下,攻击者可以利用智能系统暗中破坏网络层传感器的读数,从而导致不同的操作问题,在极端情况下可能导致级联故障或停电。作为保护现代电网的一步,本文提出了一种面向递归神经网络(rnn)的检测方法,以防止针对美国南伊利诺伊大学(Carbondale, IL, USA)开发的实验室规模微电网的虚假数据注入(FDI)网络攻击。为了显著提高所获得结果的质量,以适应现实系统,所提出的框架(即FDI网络攻击和基于rnn的检测方法)以硬件在环(HIL)试验台的形式设置为实时数字模拟器,该平台利用开发的实验室规模微电网的物理组件。在这方面,OP4510 HIL模拟器通过16通道Imperix电源接口和双端口PCI-E X1千兆以太网进行升级,以对传感器读数执行FDI攻击。此外,所提出的检测框架能够将FDI攻击与其他瞬时事件(例如,需求水平的改变)区分开来。实验结果证明了所提出的假数据检测方法在不同场景下的有效性。
Detection of False Data Injection Cyberattacks: Experimental Validation on a Lab-scale Microgrid
Instantaneous monitoring of smart microgrids is a crucial task of system operators to ensure an acceptable level of security and reliability in the system. To this end, modern communication platforms are being introduced to facilitate the data exchange between field devices and microgrid control center (i.e., a cyber-physical power system). This is where an adversary can take advantage of the smart system to stealthy compromise the sensors’ readings in the cyber layer resulting in different operational issues, which can lead to cascading failures or blackout in extreme cases. As a step toward protecting modern power networks, this article proposes a detection approach, which is oriented toward recurrent neural networks (RNNs), against false data injection (FDI) cyberattacks targeting a lab-scale microgrid developed in Southern Illinois University, Carbondale, IL, USA. To significantly enhance the quality of obtained results in order to be adapted with realistic systems, the proposed framework (i.e., the FDI cyberattack and the RNN-based detection approach) is set up as a real-time digital simulator in the form of hardware-in-the-loop (HIL) testbed, which utilizes the physical components of the developed lab-scale microgrid. In this regard, the OP4510 HIL simulator is upgraded by a 16-channel Imperix Power Interface and a dual-port PCI-E X1 Gigabit Ethernet to perform the FDI attacks on the sensors’ readings. Moreover, the proposed detection framework is able to distinguish FDI attacks from other transient events (e.g., alteration in demand level). The experimental results demonstrate the effectiveness of the developed false data detection approach in different scenarios.