Trust-Based Detection and Mitigation of Cyber Attacks in Distributed Cooperative Control of Islanded AC Microgrids
Abstract
:1. Introduction
- This study introduce a novel detection approach that leverages KL-divergence for trust calculation in voltage measurements, enabling precise identification of False Data Injection Attacks (FDIAs) in islanded AC microgrids. This method stands out as it does not require prior data or complex modeling, making it highly effective in real-time detection of stealthy and sophisticated cyberattacks.
- Our methodology eliminates the need for data dependency by implementing a resilient control mechanism that functions without requiring historical datasets. This data-independent approach enhances the adaptability and scalability of the control system, making it more robust and suitable for dynamic and evolving microgrid environments.
- Unlike existing methods that primarily focus on detecting cyberattacks, our approach provides a comprehensive solution that includes both detection and mitigation strategies. This dual capability ensures that once an attack is identified, the system can quickly respond and maintain stability, making our method particularly effective against stealthy attacks and ensuring continuous secure operation of the microgrid.
2. Materials and Methods
2.1. Basic of Graph Theory
2.2. Microgrid Model
2.3. Traditional Cooperative Control Method
2.4. Attack Model
2.5. Detection Method
- (1)
- ,
- (2)
- if and only if .
2.6. Trust-Based Resilient Cooperative Control Method
2.6.1. Trust of DERs in Their Own Voltage Measurement
2.6.2. Trust of DERs in Neighbor’s Voltage
2.6.3. Attack Mitigation by Own and Neighbor’s Trust
Algorithm 1 DER Attack Detection and Distributed Control Protocol Update |
|
3. Results and Discussion
Approach | Detection Accuracy | Detection Time | Mitigation Time | Resilience | Requirements | Key Advantage | References |
---|---|---|---|---|---|---|---|
Resilient Control via Trust Calculation of Voltage Measurements | Around 100% | Very Fast | Very Fast | Very High | Minimal: No data dependency, no complex mathematical model needed | Effective against stealthy attacks, robust and adaptive to sophisticated attacks | This work |
Data-Driven Machine Learning | 90∼98% | Fast | Medium | Medium | Large dataset for training, complex model tuning | Good response to common attacks | [32,35] |
Observer-based Anomaly Detection | 85∼95% | Medium | Slow | Medium | Complex state estimation models | Suitable for large-scale systems | [14,15,18] |
Distributed Consensus Algorithm with Redundancy | 88∼90% | Medium | Medium | Medium | Redundant communication and computational resources | Provides redundancy for additional safety | [8,10,11,20] |
Game-Theoretic Approach | 87∼95% | Fast | Medium | High | Strategic model setup and complex algorithms | Effective against strategic attacks | [41] |
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
CPS | Cyber-Physical Systems |
DDoS | Distributed Denial-of-Service |
DERs | Distributed Energy Resources |
DG | Distributed Generation |
DoS | Denial-of-Service |
FDIA | False Data Injection Attacks |
KL | Kullback-Leibler |
PCC | Point of Common Coupling |
PWM | Pulse Width Modulation |
SCADA | Supervisory Control and Data Acquisition |
, | Frequency and Voltage Droop Coefficient |
, | Frequency and Voltage Output from at time t |
, | System Reference Frequency and Voltage |
, | Nominal Frequency and Voltage |
and | |
Output Voltage and Current | |
Voltage Output from N DG units | |
Parameters (Voltage, Reactive Power, Frequency, Current, Real Power | |
, | Standard Deviation of Gaussian Random Valiable for Frequency and Voltage measurement |
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Load 1 | Load 2 | Load 3 | Load 4 | ||||
---|---|---|---|---|---|---|---|
1.5 |
DER | ||
---|---|---|
0.036 | 0.026 | |
0.13 | 0.09 | |
0.13 | 0.07 | |
460 | 420 | |
18 | 13 | |
23,000 | 19,000 |
DER 1, 2, 3, 4, 5, 11, 12, 13, 14, 15, and 21 | DER 6, 7, 8, 9, 10, 16, 17, 18, 19, 20 and 22 | ||
---|---|---|---|
0.13 | 0.07 | ||
460 | 420 | ||
18 | 13 | ||
23,000 | 19,000 |
Line , | Line | ||
---|---|---|---|
R | 0.27 | R | |
X | X | ||
Load | Load | ||
R | R | ||
X | X |
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Taher, M.A.; Tariq, M.; Sarwat, A.I. Trust-Based Detection and Mitigation of Cyber Attacks in Distributed Cooperative Control of Islanded AC Microgrids. Electronics 2024, 13, 3692. https://doi.org/10.3390/electronics13183692
Taher MA, Tariq M, Sarwat AI. Trust-Based Detection and Mitigation of Cyber Attacks in Distributed Cooperative Control of Islanded AC Microgrids. Electronics. 2024; 13(18):3692. https://doi.org/10.3390/electronics13183692
Chicago/Turabian StyleTaher, Md Abu, Mohd Tariq, and Arif I. Sarwat. 2024. "Trust-Based Detection and Mitigation of Cyber Attacks in Distributed Cooperative Control of Islanded AC Microgrids" Electronics 13, no. 18: 3692. https://doi.org/10.3390/electronics13183692
APA StyleTaher, M. A., Tariq, M., & Sarwat, A. I. (2024). Trust-Based Detection and Mitigation of Cyber Attacks in Distributed Cooperative Control of Islanded AC Microgrids. Electronics, 13(18), 3692. https://doi.org/10.3390/electronics13183692