Pseudo-Three-Layer Sequential Model-Free Predictive Control With Neural-Network Observer for Parallel T-Type Three-Level Converters

Cao, Tianxu; Yu, YinHui; Zhang, Jiahao

Abstract

Parallel T-type three-level converter (3LT(2)C) system has been widely concerned with its high-quality output current and improved efficiency in low-voltage applications. However, for parallel 3LT(2)C, the power quality of the grid current should be considered, and the neutral-point (NP) voltage and zero-sequence circulating current (ZSCC) should be suppressed. In addition, the filter inductor mismatch can also seriously affect the overall performance. Based on the above considerations, this article proposes a novel sequential model-free predictive control method based on an ultralocal model (ULM) and a neural-network observer (NNO) for parallel-3LT(2)C. First, a cost function-free NP voltage control is designed, which significantly suppresses the NP voltage fluctuations and does not need to know the values of dc-bus capacitances. Second, the ULMs of the grid-side current and ZSCC are designed, and the uncertain terms of the ULM are estimated with high accuracy by the NNO. Finally, a pseudo-three-layer sequential model predictive control is designed to simplify the weight factor selection. Comparative simulations and experiments verify the excellent performance of the proposed algorithm under parameter mismatch and different current references.

Más información

Título según WOS: Pseudo-Three-Layer Sequential Model-Free Predictive Control With Neural-Network Observer for Parallel T-Type Three-Level Converters
Título de la Revista: IEEE TRANSACTIONS ON POWER ELECTRONICS
Volumen: 39
Número: 7
Editorial: IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
Fecha de publicación: 2024
Página de inicio: 7848
Página final: 7862
DOI:

10.1109/TPEL.2024.3379419

Notas: ISI