A Study on Effects of Different Control Period of Neural Network Based Reference Modified PID Control for DC-DC Converters

H. Maruta, Hironobu Taniguchi, F. Kurokawa
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引用次数: 2

Abstract

This paper studies about computational burden of a reference modified PID with a neural network prediction for dc-dc converters. Flexible control methods are required to realize a superior transient response since the converter has a nonlinear behavior. However, the computational burden becomes a problem to implement the control to computation devices. In this paper, the neural network is adopted to improve the transient response of output voltage of the dc-dc converter under the consideration of its computational burden. The neural network computation part has a longer computation period than the PID main control part. It can be possible since the neural network gives more than one predictions which are required for the reference modification for each main control period. Therefore, the reference modification can be adopted on every main control period. From results, it is confirmed that the proposed method can improve the transient response effectively with reducing computational burden of neural network control.
基于神经网络的参考修正PID控制对DC-DC变换器不同控制周期的影响研究
本文研究了基于神经网络预测的参考修正PID对dc-dc变换器的计算量问题。由于变换器具有非线性特性,需要灵活的控制方法来实现良好的暂态响应。然而,计算量的增加成为实现对计算设备控制的一个问题。本文在考虑到dc-dc变换器计算量大的情况下,采用神经网络改善其输出电压的暂态响应。与PID主控制部分相比,神经网络计算部分的计算周期更长。这是可能的,因为神经网络给出了每个主要控制周期的参考修正所需的多个预测。因此,每个主要控制周期都可以采用参考修正。结果表明,该方法可以有效地改善系统的暂态响应,减少神经网络控制的计算量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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