Energy Storage Science and Technology ›› 2021, Vol. 10 ›› Issue (3): 1127-1136.doi: 10.19799/j.cnki.2095-4239.2021.0013
• Energy Storage Test: Methods and Evaluation • Previous Articles Next Articles
Shiyi FU1,2(), Taolin LYU1,2, Fanqi MIN2,3,4, Weilin LUO1,2,3, Chengdong LUO1,2, Lei WU1,2, Jingying XIE1,2()
Received:
2021-01-11
Revised:
2021-01-23
Online:
2021-05-05
Published:
2021-04-30
Contact:
Jingying XIE
E-mail:syFu1996@126.com;jyxie@hit.edu.cn
CLC Number:
Shiyi FU, Taolin LYU, Fanqi MIN, Weilin LUO, Chengdong LUO, Lei WU, Jingying XIE. Review of estimation methods on SOC of lithium-ion batteries in electric vehicles[J]. Energy Storage Science and Technology, 2021, 10(3): 1127-1136.
Table 1
Recursive process of EKF、UKF and CKF"
对非线性系统 |
---|
EKF: 计算雅克比矩阵: 计算状态变量的一部预测及协方差矩阵: 计算卡尔曼增益: 计算观测值: 状态和协方差矩阵更新: UKF: 构造sigma点集与权值,对于n维状态向量,一共有2n+1个sigma点 |
计算sigma数据点集的一步预测值: 计算状态变量的一步预测及协方差矩阵: 计算新sigma点集: 利用新sigma点集代入观测方程: 计算观测估计值的均值: 计算自相关矩阵: 计算互相关矩阵: 计算卡尔曼增益: 状态和协方差矩阵更新: CKF: 构造容积点集,对于n维状态向量,一共有m=2n个容积点: 其中 传播容积点: 计算状态一步预测值: 计算状态预测方差矩阵: 计算方差矩阵平方根 构造新容积点集: 传播新容积点: 计算观测估计值: 计算自相关矩阵: 计算互相关矩阵: 计算卡尔曼增益: 状态和协方差矩阵更新: |
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