Abstract
Physics-informed machine learning (PIML) has been emerging as a promising tool for applications with domain knowledge and physical models. To uncover its potentials in power electronics, this article proposes a PIML-based parameter estimation method demonstrated by a case study of dc-dc Buck converter. A deep neural network and the dynamic models of the converter are seamlessly coupled. It overcomes the challenges related to training data, accuracy, and robustness which a typical data-driven approach has. This exemplary application envisions to provide a new perspective for tailoring existing machine learning tools for power electronics.
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Zhao, S., Peng, Y., Zhang, Y., & Wang, H. (2022). Parameter Estimation of Power Electronic Converters with Physics-Informed Machine Learning. IEEE Transactions on Power Electronics, 37(10), 11567–11578. https://doi.org/10.1109/TPEL.2022.3176468
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