Risk assessment framework for power control systems with PMU-based intrusion response system

Cyber threats are serious concerns for power systems. For example, hackers may attack power control systems via interconnected enterprise networks. This paper proposes a risk assessment framework to enhance the resilience of power systems against cyber attacks. The duality element relative fuzzy eva...

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Main Authors: Jie Yan, Manimaran Govindarasu, Chen-Ching Liu, Ming Ni, Umesh Vaidya
Format: Article
Language:English
Published: IEEE 2015-01-01
Series:Journal of Modern Power Systems and Clean Energy
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9005363/
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spelling doaj-08289b71eb6c4512ab8e4731fd549f8e2021-04-23T16:08:55ZengIEEEJournal of Modern Power Systems and Clean Energy2196-54202015-01-013332133110.1007/s40565-015-0145-89005363Risk assessment framework for power control systems with PMU-based intrusion response systemJie Yan0Manimaran Govindarasu1Chen-Ching Liu2Ming Ni3Umesh Vaidya4Market Engineering, MISO,Carmel,IN,USA,46032Iowa State University,Department of Electrical and Computer Engineering,Ames,IA,USA,50011School of Electrical Engineering and Computer Science, Washington State University,Pullman,WA,USA,99165NARI Technology Co. Ltd.,Nanjing,China,211106Iowa State University,Department of Electrical and Computer Engineering,Ames,IA,USA,50011Cyber threats are serious concerns for power systems. For example, hackers may attack power control systems via interconnected enterprise networks. This paper proposes a risk assessment framework to enhance the resilience of power systems against cyber attacks. The duality element relative fuzzy evaluation method is employed to evaluate identified security vulnerabilities within cyber systems of power systems quantitatively. The attack graph is used to identify possible intrusion scenarios that exploit multiple vulnerabilities. An intrusion response system (IRS) is developed to monitor the impact of intrusion scenarios on power system dynamics in real time. IRS calculates the conditional Lyapunov exponents (CLEs) on line based on the phasor measurement unit data. Power system stability is predicted through the values of CLEs. Control actions based on CLEs will be suggested if power system instability is likely to happen. A generic wind farm control system is used for case study. The effectiveness of IRS is illustrated with the IEEE 39 bus system model.https://ieeexplore.ieee.org/document/9005363/Cyber securitySupervisory control and data acquisition (SCADA)Risk assessmentIntrusion response system (IRS)Conditional Lyapunov exponents (CLEs)Phasor measurement unit (PMU)
collection DOAJ
language English
format Article
sources DOAJ
author Jie Yan
Manimaran Govindarasu
Chen-Ching Liu
Ming Ni
Umesh Vaidya
spellingShingle Jie Yan
Manimaran Govindarasu
Chen-Ching Liu
Ming Ni
Umesh Vaidya
Risk assessment framework for power control systems with PMU-based intrusion response system
Journal of Modern Power Systems and Clean Energy
Cyber security
Supervisory control and data acquisition (SCADA)
Risk assessment
Intrusion response system (IRS)
Conditional Lyapunov exponents (CLEs)
Phasor measurement unit (PMU)
author_facet Jie Yan
Manimaran Govindarasu
Chen-Ching Liu
Ming Ni
Umesh Vaidya
author_sort Jie Yan
title Risk assessment framework for power control systems with PMU-based intrusion response system
title_short Risk assessment framework for power control systems with PMU-based intrusion response system
title_full Risk assessment framework for power control systems with PMU-based intrusion response system
title_fullStr Risk assessment framework for power control systems with PMU-based intrusion response system
title_full_unstemmed Risk assessment framework for power control systems with PMU-based intrusion response system
title_sort risk assessment framework for power control systems with pmu-based intrusion response system
publisher IEEE
series Journal of Modern Power Systems and Clean Energy
issn 2196-5420
publishDate 2015-01-01
description Cyber threats are serious concerns for power systems. For example, hackers may attack power control systems via interconnected enterprise networks. This paper proposes a risk assessment framework to enhance the resilience of power systems against cyber attacks. The duality element relative fuzzy evaluation method is employed to evaluate identified security vulnerabilities within cyber systems of power systems quantitatively. The attack graph is used to identify possible intrusion scenarios that exploit multiple vulnerabilities. An intrusion response system (IRS) is developed to monitor the impact of intrusion scenarios on power system dynamics in real time. IRS calculates the conditional Lyapunov exponents (CLEs) on line based on the phasor measurement unit data. Power system stability is predicted through the values of CLEs. Control actions based on CLEs will be suggested if power system instability is likely to happen. A generic wind farm control system is used for case study. The effectiveness of IRS is illustrated with the IEEE 39 bus system model.
topic Cyber security
Supervisory control and data acquisition (SCADA)
Risk assessment
Intrusion response system (IRS)
Conditional Lyapunov exponents (CLEs)
Phasor measurement unit (PMU)
url https://ieeexplore.ieee.org/document/9005363/
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