Giacomo Imperiale
Real-time grid parameters estimation for stability improvement of ultra-fast charging stations.
Rel. Iustin Radu Bojoi, Alessandro Roveri. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Elettrica, 2024
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Abstract
Abstract - The increasing prevalence of Electric Vehicles (EVs) requiring Ultra-fast Charging (UFC) stations is posing significant challenges for the operation of the electric power system. The goal of this work is the analysis, comparison and simulation of state-of-the-art solutions for real-time identification of grid parameters. A comprehensive literature review is conducted to identify promising solutions, followed by the development and implementation of robust identification algorithms. The methods are evaluated in the PLECS simulation environment. A two level three-phase active front-end (AFE) AC/DC converter model is implemented for this purpose. Selected estimation methods are implemented to verify their effectiveness and reliability.
A final comparison of the methods under different grid conditions determines the best approach for varying scenarios
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