Abstract
The Remedial Action Scheme (RAS) is designed to take corrective actions after detecting predetermined conditions to maintain system transient stability in large interconnected power grids. However, since RAS is usually designed based on a few selected typical operating conditions, it is not optimal in operating conditions that are not considered in the offline design, especially under frequently and dramatically varying operating conditions due to the increasing integration of intermittent renewables. The deep learning-based RAS is proposed to enhance the adaptivity of RAS to varying operating conditions. During the training, a customized loss function is developed to penalize the negative loss and suggest corrective actions with a security margin to avoid triggering under-frequency and over-frequency relays. Simulation results of the reduced United States Western Interconnection system model demonstrate that the proposed deep learning-based RAS can provide optimal corrective actions for unseen operating conditions while maintaining a sufficient security margin.
Original language | American English |
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Number of pages | 17 |
Journal | Energies |
Volume | 14 |
Issue number | 20 |
State | Published - 2021 |
NREL Publication Number
- NREL/JA-5D00-81526
Keywords
- adaptive capability
- customized loss function
- deep learning
- Remedial Action Scheme
- security margin