电气工程学报 ›› 2021, Vol. 16 ›› Issue (1): 90-102.doi: 10.11985/2021.01.013
收稿日期:
2020-12-15
修回日期:
2021-02-01
出版日期:
2021-03-25
发布日期:
2021-03-25
通讯作者:
徐海亮
E-mail:gaomk_upc@163.com;xuhl@zju.edu.cn
作者简介:
徐海亮,男,1985年生,博士,副教授。主要研究方向为新能源电力变换与微电网技术,特种车辆全电化技术。E-mail:xuhl@zju.edu.cn基金资助:
GAO Mingkun(), XU Hailiang(), WU Mingbo
Received:
2020-12-15
Revised:
2021-02-01
Online:
2021-03-25
Published:
2021-03-25
Contact:
XU Hailiang
E-mail:gaomk_upc@163.com;xuhl@zju.edu.cn
摘要:
动力电池的准确建模及荷电状态(State of charge,SOC)的精准估计对提高电池的利用效率、延长使用寿命具有重要意义。各类SOC估计方法中,基于电池等效电路模型估计法的精准性和鲁棒性好,且电池模型结构简单、计算量小,在电池管理系统(Batter management system,BMS)中具有较好应用前景。聚焦基于等效电路模型的SOC估计方法,首先简要归纳了常见的电池等效电路模型,重点对基于等效电路模型的SOC估计方法进行了系统梳理和优缺点比较,对目前影响SOC估计精度的主要症结及应对策略进行了分析和总结。最后,对未来SOC估计方法的研究动向进行了讨论与展望。
中图分类号:
高铭琨, 徐海亮, 吴明铂. 基于等效电路模型的动力电池SOC估计方法综述 *[J]. 电气工程学报, 2021, 16(1): 90-102.
GAO Mingkun, XU Hailiang, WU Mingbo. Review of SOC Estimation Methods for Power Battery Based on Equivalent Circuit Model[J]. Journal of Electrical Engineering, 2021, 16(1): 90-102.
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