储能科学与技术 ›› 2021, Vol. 10 ›› Issue (1): 335-341.doi: 10.19799/j.cnki.2095-4239.2020.0217

• 储能系统与工程 • 上一篇    下一篇

基于自适应分数阶扩展卡尔曼的锂电池SOC估算

余鹏(), 王顺利, 于春梅   

  1. 西南科技大学信息工程学院,四川 绵阳 621010
  • 收稿日期:2020-06-18 修回日期:2020-09-03 出版日期:2021-01-05 发布日期:2021-01-08
  • 作者简介:信人:余鹏(1997—),男,硕士,研究方向为锂电池管理系统,E-mail:1181161538@qq.com
  • 基金资助:
    国家自然科学基金项目(61801407)

SOC estimation of lithium batteries based on improved fractional-order extended Kalman

Peng YU(), Shunli WANG, Chunmei YU   

  1. School of Information Engineering, Southwest University of Science and Technology, Mianyang 621010, Sichuan, China
  • Received:2020-06-18 Revised:2020-09-03 Online:2021-01-05 Published:2021-01-08

摘要:

锂离子电池荷电状态估计是电池管理系统的重要组成部分,荷电状态估计结果的准确性将直接影响电池管理系统的性能。针对荷电状态估计准确性难以提高的问题,在传统扩展卡尔曼算法基础上提出一种时变等效电路模型及改进分数阶扩展卡尔曼算法,利用时变的模型参数达到对锂电池荷电状态的全周期准确描述,利用分数阶导数的记忆特性对状态预测方程进行改进。同时,考虑传统分数阶扩展卡尔曼引用历史数据带来的估算误差,加入自适应噪声因子提高算法精度。针对分数阶算法带来的数据冗余问题以及锂电池的松弛效应,利用滑窗思想设计一个大小为20(M=20)的固定窗口,随电池充放电状态实时更新窗口内数据,采用窗口中20个数据进行分数阶运算,减小数据冗余带来的误差提高估算准确度。通过采用两种不同工况对提出算法可行性与算法精度进行验证。实验结果显示分数阶扩展卡尔曼估计最大误差为0.02,而传统扩展卡尔曼算法误差最大可达0.05,同时提出算法的误差波动更小,结果表明该估算方法具有较高的精度与抗干扰能力,有助于推动锂电池管理系统的发展与更加准确的荷电状态估算方法的应用。

关键词: 锂离子电池, Thevenin模型, 分数阶扩展卡尔曼, HPPC实验

Abstract:

The state-of-charge (SOC) estimation of lithium batteries is an important part of battery management, and the accuracy of SOC estimation results can directly affect the performance of battery management systems. To address the difficult problem of improving the accuracy of the SOC estimations, a time-varying equivalent circuit model and an improved fractional extended Kalman algorithm are proposed. Varying the time in model parameters was used to accurately describe the SOC of lithium batteries over the entire cycle, and the memory characteristics of fractional derivatives were used to improve the state prediction equation. Given the estimation error usually found with the traditional fractional extended Kalman reference to historical data, the adaptive noise factor was added to improve the accuracy of the algorithm. To overcome the data redundancy caused by a fractional order algorithm and the short-term memory characteristics of lithium batteries, a fixed window with a size of 20 (M=20) was designed using the sliding window idea, and the data in the window was updated in real time with the charging and discharging of the battery. Fractional order operation was carried out with 20 data in the window, which reduces the error caused by data redundancy and improves the estimation accuracy. The feasibility and accuracy of the proposed algorithm were verified using two different working conditions. The experimental results showed that the maximum error of the fractional extended Kalman estimation was 0.02, while the maximum error of the traditional extended Kalman algorithm was 0.05. The error fluctuation of the proposed algorithm was also smaller than the traditional algorithm. Overall, the proposed estimation method has a high accuracy and anti-interference ability, which will be helpful to promote the development of lithium battery management systems and the application of more accurate state-of-charge estimation methods.

Key words: lithium-ion battery, Thevenin model, fractional-order extend Kalman filtering algorithm, HPPC experiment

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