Deep Learning-based Control Perspective for Single-Phase Grid-connected Inverter Using Gated Recurrent Units
Slimane, Sayah
Mouhoub, Birane
Khalil, Benmouiza
2025-08-11T07:09:29Z
2025-08-11T07:09:29Z
2025
1785-8860
hu_HU
http://hdl.handle.net/20.500.14044/32117
This paper introduces a novel approach to control single-phase grid-connected
inverters (GCIs) using artificial intelligence (AI), specifically employing a deep learning-
based method with Gated Recurrent Unit (GRU) networks. The proposed GRU-based
controller is trained offline using TensorFlow and Keras libraries in Python, and is
subsequently implemented for real-time applications. Comparative analysis between the
GRU-based controller and the conventional PI controller reveals distinct advantages of the
former, including improved transient response and reduced oscillations. Furthermore, the
GRU-based controller demonstrates superior performance, reducing the total harmonic
distortion (THD) and efficiently regulating current in the presence of varying grid
conditions.
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Deep Learning-based Control Perspective for Single-Phase Grid-connected Inverter Using Gated Recurrent Units
hu_HU
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Óbudai Egyetem
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Budapest
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Óbudai Egyetem
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