电信科学2024,Vol.40Issue(5) :121-130.DOI:10.11959/j.issn.1000-0801.2024145

基于改进遗传算法的双向DC-DC变换器控制策略研究

Research on control strategy of bidirectional DC-DC con-verter based on improved genetic algorithm

李黎 陈灿 李灿 高菲璠 陈拽霞 刘洋 周鸿喜
电信科学2024,Vol.40Issue(5) :121-130.DOI:10.11959/j.issn.1000-0801.2024145

基于改进遗传算法的双向DC-DC变换器控制策略研究

Research on control strategy of bidirectional DC-DC con-verter based on improved genetic algorithm

李黎 1陈灿 1李灿 1高菲璠 1陈拽霞 1刘洋 1周鸿喜1
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作者信息

  • 1. 国家电网有限公司信息通信分公司,北京 100761
  • 折叠

摘要

选取双向DC-DC变换器为研究对象,根据混合储能系统中储能元件和耗能元件的连接拓扑结构确定在不同能量流动方向上的功率需求指标,确定变换器主要元件的参数和合适的电路元件.搭建降压/升压(buck/boost)电路模型,并设计自适应快速终端滑模控制策略,提出改进遗传算法对控制器的参数进行优化.由于不同控制参数的控制效果不同,为了获得更好的电压输出特性,对自适应快速终端滑模控制策略进行参数优化,并通过仿真验证了该方法具有良好的控制性能.

Abstract

The bidirectional DC-DC converter was selected as the research object.Based on the connection topology of energy storage and consumption components in the hybrid energy storage system,power demand indicators were determined for different energy flow directions,and the parameters of the main converter components and appropriate circuit components were established.A circuit model of buck/boost was constructed,and an adaptive fast terminal sliding mode control strategy was designed.The controller parameters were optimized using an improved genetic al-gorithm.Different control parameters have different control effects.In order to obtain better voltage output character-istics,the parameters of the adaptive fast terminal sliding mode control strategy were optimized.The proposed method can be verified to exhibit good control performance through simulation.

关键词

遗传算法/BP神经网络/自抗扰/Cuk变换器/DC-DC

Key words

genetic algorithm/BP neural network/self disturbance rejection/Cuk converter/DC-DC

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出版年

2024
电信科学
中国通信学会 人民邮电出版社

电信科学

CSTPCD北大核心
影响因子:0.902
ISSN:1000-0801
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