储能科学与技术 ›› 2024, Vol. 13 ›› Issue (3): 1036-1049.doi: 10.19799/j.cnki.2095-4239.2023.0734
张爱芳1(), 魏邦达2, 李卓昊2, 杨洋1, 杨添强2, 姚俊1, 张杰1, 刘飞1, 李浩秒2(), 王康丽2, 蒋凯2
收稿日期:
2023-10-17
修回日期:
2023-11-01
出版日期:
2024-03-28
发布日期:
2024-03-28
通讯作者:
李浩秒
E-mail:128196188@qq.com;lihm@hust.edu.cn
作者简介:
张爱芳(1977—),女,硕士,正高级经济师,研究方向为综合能源及储能,E-mail:128196188@qq.com;
基金资助:
Aifang ZHANG1(), Bangda WEI2, Zhuohao LI2, Yang YANG1, Tianqiang YANG2, Jun YAO1, Jie ZHANG1, Fei LIU1, Haomiao LI2(), Kangli WANG2, Kai JIANG2
Received:
2023-10-17
Revised:
2023-11-01
Online:
2024-03-28
Published:
2024-03-28
Contact:
Haomiao LI
E-mail:128196188@qq.com;lihm@hust.edu.cn
摘要:
全钒液流电池(VRFB)具有高安全、长寿命的优势,在大规模电力储能领域中具有广阔的应用前景。高精度的电池模型及准确的电池荷电状态(SOC)估计是全钒液流电池实际应用的重要技术基础,也是其规模应用面临的主要挑战。本文对全钒液流电池仿真模型、模型参数辨识、SOC监测与在线估计,以及全钒液流电池特有的SOC估计影响因素进行综述。首先介绍了电化学模型和等效电路模型2类仿真模型,分析比较了几种用于VRFB的等效电路模型的原理及优缺点。重点综述了全钒液流电池荷电状态监测方法,包括:安时积分法、开路电压法、电位滴定法、电导率法和光学分析法,以及更具工程应用前景的荷电状态在线估计方法。总结了全钒液流电池模型参数离线与在线辨识技术,介绍了基于滤波算法与数据驱动算法的荷电状态在线估计方法。在全钒液流电池SOC估计特异性影响因素方面,讨论了包括钒离子的跨膜迁移、负极氧化副反应、负极析氢反应和温度对参数辨识与荷电状态估计的影响规律,总结展望了全钒液流电池建模及SOC在线估计面临的问题及未来研究方向。
中图分类号:
张爱芳, 魏邦达, 李卓昊, 杨洋, 杨添强, 姚俊, 张杰, 刘飞, 李浩秒, 王康丽, 蒋凯. 全钒液流电池建模及SOC在线估计研究进展[J]. 储能科学与技术, 2024, 13(3): 1036-1049.
Aifang ZHANG, Bangda WEI, Zhuohao LI, Yang YANG, Tianqiang YANG, Jun YAO, Jie ZHANG, Fei LIU, Haomiao LI, Kangli WANG, Kai JIANG. Research progress on modeling and SOC online estimation of vanadium redox-flow batteries[J]. Energy Storage Science and Technology, 2024, 13(3): 1036-1049.
表1
VRFB等效电路模型对比"
模型 | 原理图 | 建模时重点关注问题 | 优缺点及应用场景 |
---|---|---|---|
Thevenin模型 | 考虑了极化效应, | 模型简单,参数较少,易于做参数辨识;无法进行更精确的分析[ | |
PNGV模型 | 考虑了电池的动态响应过程、极化效应和电流累积效应 | 模型结构较为简单;比较适用于分析电池工作时电流、电压变化的情形,不适用于电池稳定充放电的情形[ | |
交流阻抗模型 | 根据电池的交流阻抗谱进行建模分析[ | 模型较为简单,易于搭建,能有效反映VRFB的充放电特性[ | |
等效损耗模型 | 考虑了VRFB充放电过程中产生的各种损耗和系统的瞬态响应 | 结构简单、计算方便、仿真速度快,重点关注了VRFB的充放电特性[ | |
基于电化学机理的改进等效电路模型 | 考虑了浓差极化、电化学极化和泵损对输出端电压的影响[ | 模型较为复杂,参数较多,不易进行参数辨识[ | |
电热耦合模型 | 考虑了电化学行为和热行为之间的耦合效应,使用三阶考尔网络对VRFB系统中的传热过程进行建模,充分考虑了热效应 | 模型复杂,参数较多,耦合了电路模型和热力学模型,不便于进行建模和参数辨识[ | |
分数阶模型 | VRFB被模拟为一个欧姆内阻和两个串联的半电池,考虑了VRFB的阻抗变化 | 模型较为复杂,不便于参数辨识,但可用于研究VRFB在可变充放电功率情况下的动态响应[ |
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