Litcius/Paper detail

WAMS Operations in Power Grids: A Track Fusion-Based Mixture Density Estimation-Driven Grid Resilient Approach Toward Cyberattacks

Haris M. Khalid, M. M. Qasaymeh, S. M. Muyeen, Mohamed Shawky El Moursi, Aoife Foley, Tha’er O. Sweidan, Sanjeevikumar Padmanaban

2023IEEE Systems Journal43 citationsDOI

Abstract

Synchrophasor-based wide-area monitoring system (WAMS) applications are vital for acquiring the real-time grid information under ambient and nonlinear conditions. The high dependence on sensor data and signal-processing software for daily grid operation is becoming a concern in an era prone to cyberattacks. To resolve this issue, a mixture density-based maximum likelihood (MDML) estimation was proposed to detect attack vectors. The algorithm was deployed at each monitoring node using a track-level fusion (TLF)-based architecture. A parallelized message passing interface (MPI)-based computing was processed to reduce its computational burden. This work adopted a mature application known as oscillation detection as an example of a monitoring candidate to demonstrate the proposed method. Two test cases were generated to examine the resilience and scalability of the proposed scheme. The tests were conducted in severe data-injection attacks and multiple system disturbances. Results show that the proposed TLF-based MDML estimation method can accurately extract the oscillatory parameters from the contaminated measurements.

Topics & Concepts

Computer scienceScalabilityReal-time computingGridSensor fusionNode (physics)Interface (matter)Track (disk drive)Distributed computingEngineeringArtificial intelligenceDatabaseStructural engineeringBubbleGeometryMaximum bubble pressure methodOperating systemParallel computingMathematicsPower System Optimization and StabilitySmart Grid Security and Resilience
WAMS Operations in Power Grids: A Track Fusion-Based Mixture Density Estimation-Driven Grid Resilient Approach Toward Cyberattacks | Litcius