Transfer Learning Framework for Impedance Characterization of Modular Multilevel Converters
Rahul Rane (TU Delft - Intelligent Electrical Power Grids)
Azadeh Kermansaravi (TU Delft - Intelligent Electrical Power Grids)
Pedro Vergara Barrios (TU Delft - Intelligent Electrical Power Grids)
Aleksandra Lekić (TU Delft - Intelligent Electrical Power Grids)
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Abstract
The widespread use of modular multilevel converters (MMCs) in the evolution of complex power grids presents new challenges for grid stability. MMCs have highly nonlinear impedance characteristics due to their complex internal dynamics and intricate control architectures. Due to practical constraints, physics-based models cannot accurately compute these impedances, and the use of closed-box measurement techniques is time-consuming, resulting in a limited amount of data available for impedance characterization. Thus, using current methods to estimate impedances over a wide range of operating points can be unreliable. This paper presents a transfer learning-based framework for MMC impedance characterization using system-level parameters as operating point variables. The proposed approach predicts both AC and DC side impedances simultaneously by extrapolating impedances derived using state-space modeling approaches to real-time electromagnetic transient (EMT) simulations. Finally, the method is evaluated on a practical converter from the CIGRE B4 DC grid test system for various types of controllers and scenarios involving unknown parameters.
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File under embargo until 21-07-2025