并网变流器扩展电压矢量简化有限控制集模型预测控制(FCS-MPC)

K. Alam, D. Xiao, D. Zhang, M. F. Rahman
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引用次数: 8

摘要

针对两电平三相并网变流器,提出了一种扩展电压矢量的简化有限控制集模型预测控制(FCS-MPC)。该算法采用38个电压矢量(8个实电压矢量和30个虚电压矢量)进行预测,以减小电网电流中的纹波。然而,包含如此多的电压矢量会引入不可接受的计算延迟,从而影响控制性能。为了解决这一问题,本文提出的方法采用预选方案和简化的模型预测控制方法,该方法可以在采样间隔内将预测过程限制为38个电压矢量中的12个。Matlab-Simulink环境下的仿真结果表明,该方法保持了全38电压矢量方法的有效性,同时不影响电流纹波,从而降低了计算延迟。
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Simplified finite control set model predictive control (FCS-MPC) with extended voltage vectors for grid connected converters
This paper proposes a simplified finite control set model predictive control (FCS-MPC) with extended voltage vectors for two-level three-phase grid-connected converters. The proposed algorithm uses thirty-eight voltage vectors (eight real voltage vectors and thirty virtual voltage vectors) for the prediction process to reduce the ripple in the grid current. However, the inclusion of such high number of voltage vectors can introduce unacceptable computation delay which can affect the control performances. To solve this issue, the proposed approach utilizes a pre-selection scheme along with a simplified model predictive control approach, which can limit the prediction process to only twelve of the thirty eight voltage vectors during a sampling interval. Simulation results from Matlab-Simulink environment show that the proposed method retains the effectiveness of the full thirty-eight voltage-vector approach, while the current ripple is not adversely affected and the computation delay is accordingly reduced.
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