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AI-Based Intrusion Detection Enabling Cyber-Resilience in Grid Forming Inverters
Uzair Asif
, Reza Behnam
, Ahmed Kouzou
, Mohammad B. Shadmand
*
,
Haitham Abu-Rub
*
Corresponding author for this work
HBKU College of Science and Engineering
University of Illinois at Chicago
Texas A&M University
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Engineering
Artificial Intelligence
100%
Inverter
100%
Damping Coefficient
100%
Inertia Coefficient
100%
Supervisory Control
50%
Change Rate
50%
Cyber Attack
50%
Artificial Intelligence Technique
50%
Primary Controller
50%
Malware
50%
System Frequency
50%
Estimation Time
50%
Hardware Setup
50%
Frequency Behavior
50%
Electrical Measurement
50%
Keyphrases
IEEE System
50%
False Data Injection Cyber-attack
50%
Malware Attacks
50%
System Trajectory
50%
System Disturbance
50%
Dynamic Frequency
50%
Event-triggered Strategy
50%
Computer Science
Damping Coefficient
66%
System Trajectory
33%
Event-triggered
33%