Skip to content
Open Access
  • Home
  • Collections
    • High Impact Articles
    • Jawi Collection
    • Malay Medicine
    • Forensic
  • Search Options
    • UiTM Open Access
    • Search by UiTM Scopus
    • Advanced Search
    • Search by Category
  • Discovery Service
    • Sources
    • UiTM Journals
    • List UiTM Journal in IR
    • Statistic
  • About
    • Open Access
    • Creative Commons Licenses
    • COKI | Malaysia Open Access
    • User Guide
    • Contact Us
    • Search Tips
    • FAQs
Advanced
  • Search
  • Survey of machine learning met...
  • Cite this
  • Text this
  • Email this
  • Print
  • Export Record
    • Export to RefWorks
    • Export to EndNoteWeb
    • Export to EndNote
  • Permanent link
Survey of machine learning methods for detecting false data injection attacks in power systems

Survey of machine learning methods for detecting false data injection attacks in power systems

Over the last decade, the number of cyber attacks targeting power systems and causing physical and economic damages has increased rapidly. Among them, false data injection attacks (FDIAs) are a class of cyber-attacks against power grid monitoring systems. Adversaries can successfully perform FDIAs t...

Full description

Bibliographic Details
Main Authors: Ali Sayghe, Yaodan Hu, Ioannis Zografopoulos, XiaoRui Liu, Raj Gautam Dutta, Yier Jin, Charalambos Konstantinou
Format: Article
Language:English
Published: Wiley 2020-10-01
Series:IET Smart Grid
Subjects:
security of data
power grids
power system security
power engineering computing
power system measurement
energy management systems
power system state estimation
binary decision diagrams
learning (artificial intelligence)
system data
energy management system
unknown state variables
system redundant measurements
data detection algorithms
fdia
malicious data vectors
data-driven solutions
machine learning algorithms
sensor data
power system se algorithms
false data injection attacks
power systems
cyber attacks
cyber-attacks
power grid monitoring systems
Online Access:https://digital-library.theiet.org/content/journals/10.1049/iet-stg.2020.0015
  • Holdings
  • Description
  • Similar Items
  • Staff View

Internet

https://digital-library.theiet.org/content/journals/10.1049/iet-stg.2020.0015

Similar Items

  • Review of the false data injection attack against the cyber-physical power system
    by: Qi Wang, et al.
    Published: (2019-06-01)
  • Electric Power Grid Resilience to Cyber Adversaries: State of the Art
    by: Tien Nguyen, et al.
    Published: (2020-01-01)
  • Stochastic games for power grid coordinated defence against coordinated attacks
    by: Xiaomeng Feng, et al.
    Published: (2020-04-01)
  • Local False Data Injection Attack Theory Considering Isolation Physical-Protection in Power Systems
    by: Xueqian Fu, et al.
    Published: (2020-01-01)
  • Non-linear state recovery in power system under bad data and cyber attacks
    by: Ali Tajer, et al.
    Published: (2019-01-01)

© 2020 | Services hosted by the Perpustakaan Tun Abdul Razak, | Universiti Teknologi MARA | Disclaimer


Loading...