Skip to main content
U.S. Department of Energy
Office of Scientific and Technical Information

Anomaly Detection and Mitigation for Wide-Area Damping Control using Machine Learning

Journal Article · · IEEE Transactions on Smart Grid
 [1];  [2]
  1. Iowa State University, Ames, IA (United States); Iowa State University
  2. Iowa State University, Ames, IA (United States)

In an interconnected multi-area power system, wide-area measurement based damping controllers are used to damp out inter-area oscillations, which jeopardize grid stability and constrain the power flows below to their transmission capacity. The effect of wide-area damping control (WADC) significantly depends on both power and cyber systems. At the cyber system layer, an adversary can inflict the WADC process by compromising either measurement signals, control signals or both. Stealthy and coordinated cyber-attacks may bypass the conventional cybersecurity measures to disrupt the seamless operation of WADC. This paper proposes an anomaly detection (AD) algorithm using supervised Machine Learning and a model-based logic for mitigation. The proposed AD algorithm considers measurement signals (input of WADC) and control signals (output of WADC) as input to evaluate the type of activity such as normal, perturbation (small or large signal faults), attack and perturbation-and-attack. Upon anomaly detection, the mitigation module tunes the WADC signal and sets the control status mode as either wide-area mode or local mode. The proposed anomaly detection and mitigation (ADM) module works inline with the WADC at the control center for attack detection on both measurement and control signals and eliminates the need for ADMs at the geographically distributed actuators. Here, we consider coordinated and primitive data-integrity attack vectors such as pulse, ramp, relay-trip and replay attacks. The performance of the proposed ADM algorithms was evaluated under these attack vector scenarios on a testbed environment for 2-area 4-machine power system. The ADM module shows effective performance with 96:5% accuracy to detect anomalies.

Research Organization:
Iowa State University, Ames, IA (United States)
Sponsoring Organization:
USDOE; National Science Foundation (NSF)
Grant/Contract Number:
OE0000830
OSTI ID:
1985648
Report Number(s):
DOE-ISU--0000830-6
Journal Information:
IEEE Transactions on Smart Grid, Journal Name: IEEE Transactions on Smart Grid Journal Issue: 6 Vol. 15; ISSN 1949-3053
Publisher:
IEEECopyright Statement
Country of Publication:
United States
Language:
English

Similar Records

Anomaly Detection and Mitigation in FACTS-based Wide-Area Voltage Control Systems using Machine Learning
Conference · Sun Jul 17 00:00:00 EDT 2022 · 2022 IEEE Power & Energy Society General Meeting (PESGM) · OSTI ID:2223100

A Hierarchical Multi-Agent Based Anomaly Detection for Wide-Area Protection in Smart Grid
Conference · Wed Aug 01 00:00:00 EDT 2018 · 2018 Resilience Week (RWS) · OSTI ID:1985681

Attack-resilient algorithms and testbed federation for wide-area protection and control in smart grid
Other · Tue Dec 31 23:00:00 EST 2019 · OSTI ID:1985640