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Multivector Model Predictive Power Control With Low Computational Burden for Grid-Tied Quasi-Z-Source Inverter Without Weighting Factors

Duan, Xinwei; Kang, Longyun*; Zhou, Hailan; Liu, Qinghua
Science Citation Index Expanded
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摘要

Nowadays, a model predictive control has gained a lot of attractions for power converter. To overcome the defects of the conventional model predictive control and achieve better performance, this article presents a multivector model predictive power control (MV-MPPC) with low computational burden for the grid-tied quasi-Z-source inverter (qZSI). Compared with the conventional model predictive power control (MPPC) that adopts only one vector in one control period, the proposed MV-MPPC applies several vectors including two active vectors, one null vector, and one shoot-through (ST) vector to fulfill the expected performance for the grid-tied qZSI. By calculating the optimal duty ratios of the ST vector, the inductor current ripple can be greatly reduced. To eliminate the weighting factor, a modified sliding-mode control method for simultaneously controlling the capacitor voltage and the inductor current to their setting points is proposed. Furthermore, a quick and effective optimal sector selection method is given, which chooses the optimal sector through a look-up table instead of a bunch of complex calculations. Hence, the computational burden of the proposed MV-MPPC is decreased with significance. Both simulation and experimental results are shown to validate the effectiveness and the advantages of the proposed method.

关键词

Inductors Capacitors Voltage control Switches Predictive models Inverters Mathematical models Model predictive power control (MPPC) modified sliding-mode control (SMC) quasi-z-source inverter (qZSI) weighting factor