Robust Massively Parallel Dynamic State Estimation of Power Systems Against Cyber-Attack

The evolution of traditional energy networks toward smart grids increases security vulnerabilities in the power system infrastructure. State estimation plays an essential role in the efficient and reliable operation of power systems, so its security is a major concern. Coordinated cyber-attacks, inc...

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Main Authors: Hadis Karimipour, Venkata Dinavahi
Format: Article
Language:English
Published: IEEE 2018-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8234576/
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spelling doaj-da4173a60f254ba3a5079120fe2625092021-03-29T20:32:48ZengIEEEIEEE Access2169-35362018-01-0162984299510.1109/ACCESS.2017.27865848234576Robust Massively Parallel Dynamic State Estimation of Power Systems Against Cyber-AttackHadis Karimipour0Venkata Dinavahi1Engineering Systems and Computing Group, School of Engineering, University of Guelph, Guelph, ON, CanadaDepartment of Electrical and Computer Engineering, University of Alberta, Edmonton, AB, CanadaThe evolution of traditional energy networks toward smart grids increases security vulnerabilities in the power system infrastructure. State estimation plays an essential role in the efficient and reliable operation of power systems, so its security is a major concern. Coordinated cyber-attacks, including false data injection (FDI) attack, can manipulate smart meters to present serious threats to grid operations. In this paper, a robust state estimation algorithm against FDI attack is presented. As a solution to mitigate such an attack, a new analytical technique is proposed based on the Markov chain theory and Euclidean distance metric. Using historical data of a set of trusted buses, a Markov chain model of the system normal operation is formulated. The estimated states are analyzed by calculating the Euclidean distance from the Markov model. States, which match the lower probability, are considered as attacked states. It is shown that the proposed method is able to detect malicious attack, which is undetectable by traditional bad data detection (BDD) methods. The proposed robust dynamic state estimation algorithm is built on a Kalman filter, and implemented on the massively parallel architecture of graphic processing unit using fine-grained parallel programming techniques. Numerical simulations demonstrate the efficiency and accuracy of the proposed mechanism.https://ieeexplore.ieee.org/document/8234576/Bad data detectioncyber-attackfalse data injectiondynamic state estimationgraphic processing unitslarge-scale systems
collection DOAJ
language English
format Article
sources DOAJ
author Hadis Karimipour
Venkata Dinavahi
spellingShingle Hadis Karimipour
Venkata Dinavahi
Robust Massively Parallel Dynamic State Estimation of Power Systems Against Cyber-Attack
IEEE Access
Bad data detection
cyber-attack
false data injection
dynamic state estimation
graphic processing units
large-scale systems
author_facet Hadis Karimipour
Venkata Dinavahi
author_sort Hadis Karimipour
title Robust Massively Parallel Dynamic State Estimation of Power Systems Against Cyber-Attack
title_short Robust Massively Parallel Dynamic State Estimation of Power Systems Against Cyber-Attack
title_full Robust Massively Parallel Dynamic State Estimation of Power Systems Against Cyber-Attack
title_fullStr Robust Massively Parallel Dynamic State Estimation of Power Systems Against Cyber-Attack
title_full_unstemmed Robust Massively Parallel Dynamic State Estimation of Power Systems Against Cyber-Attack
title_sort robust massively parallel dynamic state estimation of power systems against cyber-attack
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2018-01-01
description The evolution of traditional energy networks toward smart grids increases security vulnerabilities in the power system infrastructure. State estimation plays an essential role in the efficient and reliable operation of power systems, so its security is a major concern. Coordinated cyber-attacks, including false data injection (FDI) attack, can manipulate smart meters to present serious threats to grid operations. In this paper, a robust state estimation algorithm against FDI attack is presented. As a solution to mitigate such an attack, a new analytical technique is proposed based on the Markov chain theory and Euclidean distance metric. Using historical data of a set of trusted buses, a Markov chain model of the system normal operation is formulated. The estimated states are analyzed by calculating the Euclidean distance from the Markov model. States, which match the lower probability, are considered as attacked states. It is shown that the proposed method is able to detect malicious attack, which is undetectable by traditional bad data detection (BDD) methods. The proposed robust dynamic state estimation algorithm is built on a Kalman filter, and implemented on the massively parallel architecture of graphic processing unit using fine-grained parallel programming techniques. Numerical simulations demonstrate the efficiency and accuracy of the proposed mechanism.
topic Bad data detection
cyber-attack
false data injection
dynamic state estimation
graphic processing units
large-scale systems
url https://ieeexplore.ieee.org/document/8234576/
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AT venkatadinavahi robustmassivelyparalleldynamicstateestimationofpowersystemsagainstcyberattack
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