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A Neural Network-Based Dynamic Cost Function for the Implementation of a Predictive Current Controller

机译:基于神经网络的动态成本函数,用于实现预测电流控制器

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Predictive current controllers based on finite control set-model predictive control (FCS-MPC) have been extensively used in power converters. One of the clear advantages of FCS-MPC is that several control targets and constraints can be included in a cost function and simultaneously controlled. In order to establish the importance of one controlled target in relation to the others, weighting factors are used. Once the weighting factors have been tuned, they remain unchanged. This paper presents a neural network-based novel approach to the problem, in which weighting factors are tuned online as a function of several merit figures and references. This adaptive method updates online the weighting factors in the cost function when either the merit figures or the references change to boost the performance of the controller. This strategy is validated through simulations and experiments are carried out on a three-level neutral point clamped converter. The results are compared with the conventional FCS-MPC, which is based on static cost functions.
机译:基于有限控制集模型预测控制(FCS-MPC)的预测电流控制器已广泛用于功率转换器。 FCS-MPC的明显优势之一是,几个控制目标和约束条件可以包含在成本函数中,并可以同时进行控制。为了确定一个受控目标相对于其他目标的重要性,使用了加权因子。调整加权因子后,它们将保持不变。本文提出了一种基于神经网络的新方法来解决该问题,其中权重因子可以根据几个优值指标和参考值进行在线调整。当性能指标或参考值发生变化以提高控制器性能时,此自适应方法会在线更新成本函数中的加权因子。通过仿真验证了该策略,并在三电平中性点钳位转换器上进行了实验。将结果与基于静态成本函数的常规FCS-MPC进行比较。

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