Performance characteristics of reference modification control DC-DC converter

H. Maruta, M. Motomura, F. Kurokawa
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引用次数: 1

Abstract

The purpose of this paper is to show performance characteristics of the reference modification control dc-dc converter which uses neural network and model controls. In the presented method, the neural network controller is used to modify the reference in the proportional control term of the conventional PID control. The neural network controller is repeatedly trained using former predicted data to predict the output voltage. After the training, the reference in the P control is modified by the predictor to reduce the difference of the output voltage and the desired one. This neural network control works to improve the transient response, however, it is difficult to improve transient response greatly when the operation mode across the discontinuous conduction mode and the continuous conduction mode. The model control is adopted simultaneously to ensure the performance from the no-load condition to the full-load condition as the model control is modified the bias term of the PID control in both steady and transient states. As the result, the convergence time of output voltage in the presented method is improved by 83% than the conventional PID control. Furthermore, the undershoot of output voltage is improved by 75% than the conventional PID control.
参考修正控制DC-DC变换器的性能特性
本文的目的是展示采用神经网络和模型控制的参考修正控制dc-dc变换器的性能特点。在该方法中,利用神经网络控制器对传统PID控制的比例控制项中的参考点进行修正。神经网络控制器使用先前的预测数据进行反复训练以预测输出电压。训练完成后,预测器对P控制中的参考值进行修正,以减小输出电压与期望电压的差值。这种神经网络控制可以改善暂态响应,但当工作模式跨越断续导通模式和连续导通模式时,难以显著改善暂态响应。同时采用模型控制,通过对稳态和暂态PID控制的偏置项进行修正,保证了从空载状态到满载状态的性能。结果表明,该方法对输出电压的收敛时间比传统PID控制提高了83%。此外,输出电压欠冲比传统PID控制提高了75%。
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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