An AI-Based Supervisory Measurement Integrity Validation Layer for Cyber-Resilient AC/DC Protection in Inverter-Based Microgrids
Ahmad Mohammad Saber, Ahmed Saber Refae, Davor Svetinovic, Hatem Zeineldin, Amr Youssef, Ehab F. El-Saadany, Deepa Kundur

TL;DR
This paper presents a neural network-based supervisory layer for LCDRs in inverter microgrids, detecting false data injections without extra sensors or topology knowledge, ensuring cyber-physical protection integrity.
Contribution
It introduces a novel measurement validation scheme using recurrent neural networks that interprets synchronized current measurements to detect cyber-attacks in AC/DC microgrids.
Findings
High detection accuracy of FDIA scenarios.
Operates in real-time with no additional sensors.
Effective for both AC and DC LCDRs.
Abstract
Line current differential relays (LCDRs) are measurement-driven relays that rely on time-synchronized multi-phase current waveforms to infer internal faults in AC and DC power networks. In inverter-based microgrids, however, the increasing reliance on digitally communicated measurements exposes LCDRs to false-data injection attacks (FDIAs), in which adversaries manipulate remote measurement streams to create protection-triggering yet physically inconsistent current trajectories. This paper addresses this emerging measurement integrity problem by introducing a measurement integrity validation scheme that operates as a supervisory instrumentation layer for modern LCDRs. The proposed scheme interprets short windows of synchronized instantaneous current measurements recorded during relay operation and assesses their physical consistency to distinguish genuine fault-induced trajectories from…
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