一种基于重复训练神经网络预测器的dc-dc变换器控制新方法

F. Kurokawa, K. Ueno, H. Maruta, H. Osuga
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引用次数: 12

摘要

提出了一种基于预测的数字控制dc-dc变换器。该方法采用神经网络控制与传统的P-I-D控制相协调来改善暂态响应。基于预测的控制项由神经网络的重复训练得到的预测数据组成。当负载快速变化时,这种方法可以非常有效地改善暂态响应。与传统的负载电阻阶跃变化相比,该方法有效地抑制了输出电压过冲和电抗器电流过冲。该方法基于神经网络学习,在不需要改变算法的情况下,具有较高的可用性,为电路系统的设计提供了简便的方法。将电路的P-I-D控制参数设置为非最优参数,并以相同的方式使用所提出的方法,也证实了所提出方法的充分可用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Control Method for dc-dc Converter by Neural Network Predictor with Repetitive Training
This paper proposes a novel prediction based digital control dc-dc converter. In this method, a neural network control is adopted to improve the transient response in coordination with a conventional P-I-D control. The prediction based control term is consists of predicted data which are obtained from repetitive training of the neural network. This works to improve the transient response very effectively when the load is changed quickly. As a result, the undershoot of the output voltage and the overshoot of the reactor current are suppressed effectively as compared with the conventional one in the step change of load resistance. The proposed method is based on the neural network learning, it is expected that the proposed approach has high availability in providing the easy way for the design of circuit system since there is no need to change the algorithm. The adequate availability of the proposed method is also confirmed by the experiment in which P-I-D control parameters of the circuit are set to non-optimal ones and the proposed method is used in the same manner.
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