Neural networks learn dissipativity matrices from data to create a model-free controller that improves transient stability in all-VSG power systems.
A Data-Driven Optimal Control Architecture for Grid-Connected Power Converters
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abstract
Grid-connected power converters are ubiquitous in modern power systems, acting as grid interfaces of renewable energy sources, energy storage systems, electric vehicles, high-voltage DC systems, etc. Conventionally, power converters use multiple PID regulators to achieve different control objectives such as grid synchronization and voltage/power regulation, where the PID parameters are usually tuned based on a presumed (and often overly-simplified) power grid model. However, this may lead to inferior performance or even instabilities in practice, as the real power grid is highly complex, variable, and generally unknown. To tackle this problem, we employ a data-enabled predictive control (DeePC) to perform data-driven, optimal, robust, and adaptive control for power converters. We call the converters that are operated in this way DeePConverters. A DeePConverter can implicitly perceive the characteristics of the power grid from measured data and adjust its control strategy to achieve optimal, robust, and adaptive performance. We present the modular configurations, generalized structure, control behavior specification, inherent robustness, detailed implementation, computational aspects, and online adaptation of DeePConverters. High-fidelity simulations and hardware-in-the-loop (HIL) tests are provided to validate the effectiveness of DeePConverters.
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2025 1verdicts
UNVERDICTED 1representative citing papers
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Model-Free Power System Stability Enhancement with Dissipativity-Based Neural Control
Neural networks learn dissipativity matrices from data to create a model-free controller that improves transient stability in all-VSG power systems.