Fault Recovery Methods for a Converged System Comprised of Power Grids, Transportation Networks and Information Networks
Abstract
:1. Introduction
- Focusing on the charging behavior of electric vehicles, a TNCS model is established to reveal the underlying interaction mechanisms;
- An efficient fault recovery method for TNCS is proposed, incorporating an improved TD3 algorithm and considering communication delays. By designing and improving the TD3 algorithm, the uncertainties and security issues in the restoration process are considered, leading to the design of an effective recovery algorithm. In addition, the resilience of the algorithm is evaluated by introducing DoS attacks in the context of power grid faults. Lastly, the efficacy of the proposed recovery method is demonstrated through simulation experiments.
2. Methods
2.1. Modeling
2.1.1. Overall Framework
2.1.2. Execution Layer
2.1.3. Coupling Layer
2.1.4. Control Layer
2.2. Fault Recovery Method
2.2.1. Design of Restoration Model
2.2.2. Design of Restoration Algorithm
3. Experiments and Results
3.1. Experimental Settings
3.2. Small-Scale Power Grid Faults
3.3. Large-Scale Power Grid Faults
3.4. Communication Faults
4. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Steps | Power Grid Nodes | Power Grid Lines |
---|---|---|
1 | 1, 2 | 31 |
2 | 6 | 36 |
3 | 4 | 33 |
4 | 37 | |
5 | 32 | |
6 | 34 |
Scheme | Restoration Sequence | Restoration Benefit (MW) |
---|---|---|
31, 36, 33, 37, 32, 34 | 2.8239 | |
33, 36, 37, 32, 31, 34 | 2.2689 | |
31, 32, 34, 37, 36, 33 | 2.3564 | |
36, 32, 34, 31, 33, 37 | 2.3901 | |
34, 33, 36, 32, 31, 37 | 2.1032 | |
31, 37, 32, 34, 36, 33 | 2.2946 |
Algorithm | Performance Metrics | |
---|---|---|
Restoration Benefit (MW) | Convergence Time (s) | |
Proposed algorithm | 12.3968 | 14,763 |
GA | 10.4519 | 15,192 |
PSO | 9.7987 | 14,580 |
DQN | 10.4832 | 17,244 |
AC | 10.8751 | 16,848 |
DDPG | 11.7285 | 16,416 |
TD3 | 12.3812 | 16,211 |
Restoration Benefit (MW) () | |||||
---|---|---|---|---|---|
1 | 11.252 | 10.955 | 10.705 | 10.457 | 10.207 |
2 | 11.873 | 11.590 | 11.401 | 11.159 | 10.915 |
3 | 12.312 | 12.065 | 11.823 | 11.577 | 11.321 |
4 | 12.510 | 12.267 | 12.030 | 11.780 | 11.531 |
5 | 12.627 | 12.371 | 12.120 | 11.878 | 11.652 |
6 | 12.800 | 12.550 | 12.231 | 11.990 | 11.730 |
Value | Average Occurrence Number | Difference Ratio |
---|---|---|
1 | 258.6 | 0 |
0.9 | 229.4 | 11.29% |
0.8 | 202.6 | 11.68% |
0.7 | 177.4 | 12.44% |
0.6 | 153.2 | 13.64% |
0.5 | 129.2 | 15.67% |
0.4 | 104.2 | 19.35% |
0.3 | 78.8 | 24.38% |
0.2 | 65.0 | 17.51% |
0.1 | 55.5 | 14.62% |
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Zhang, G.; Liu, C.; Jiang, H.; Wang, J. Fault Recovery Methods for a Converged System Comprised of Power Grids, Transportation Networks and Information Networks. Electronics 2023, 12, 4508. https://doi.org/10.3390/electronics12214508
Zhang G, Liu C, Jiang H, Wang J. Fault Recovery Methods for a Converged System Comprised of Power Grids, Transportation Networks and Information Networks. Electronics. 2023; 12(21):4508. https://doi.org/10.3390/electronics12214508
Chicago/Turabian StyleZhang, Geng, Chenxu Liu, Hao Jiang, and Jiye Wang. 2023. "Fault Recovery Methods for a Converged System Comprised of Power Grids, Transportation Networks and Information Networks" Electronics 12, no. 21: 4508. https://doi.org/10.3390/electronics12214508
APA StyleZhang, G., Liu, C., Jiang, H., & Wang, J. (2023). Fault Recovery Methods for a Converged System Comprised of Power Grids, Transportation Networks and Information Networks. Electronics, 12(21), 4508. https://doi.org/10.3390/electronics12214508