Energy Storage Science and Technology ›› 2022, Vol. 11 ›› Issue (10): 3328-3344.doi: 10.19799/j.cnki.2095-4239.2022.0078
• Energy Storage Test: Methods and Evaluation • Previous Articles Next Articles
Chong LI1(), Chenhui WANG1, Gao WANG1, Zonghu LU2(), Chengzhi MA2
Received:
2022-02-16
Revised:
2022-02-27
Online:
2022-10-05
Published:
2022-10-10
Contact:
Zonghu LU
E-mail:357851791@qq.com;luzonghu0101@163.com
CLC Number:
Chong LI, Chenhui WANG, Gao WANG, Zonghu LU, Chengzhi MA. Review on implementation method analysis and performance comparison of lithium battery state of charge estimation[J]. Energy Storage Science and Technology, 2022, 11(10): 3328-3344.
Table 3
Experimental test technology for estimating SOC of lithium battery"
传统SOC 估计方法 | 技术优点 | 技术缺点 |
---|---|---|
放电法 | 1.计算简单; 2.结果较为可靠,精度高 | 1.放电时间长,故耗时较长; 2.无法在线检测,需要独立实验 |
开路电压法 | 1.原理简单; 2.精度较高 | 1.因电池需静置,测量耗费时间长; 2.受温度影响较大; 3.无法在线检测 |
电导法 | 1.原理简单; 2.易于实现 | 1.对电导的测量精度要求较高; 2.受温度影响较大; 3.无法在线检测 |
交流阻抗法 | 1.易于理解; 2.精度较高 | 1.锂电池电阻影响因素较多; 2.测量精度易受充电波纹影响; 3.对锂电池SOC测量有范围限制; 4.无法在线检测 |
安时积分法 | 1.计算较为简单; 2.可在线实时计算锂电池SOC | 1.对初始电量测量精度要求高; 2.测量过程中的累积误差大且不具备校正误差能力 |
Table 4
Lithium battery electrical modeling technology comparison"
建模方法 | 典型应用模型 | 技术优势 | 技术局限性 |
---|---|---|---|
电化学机理模型 | 1.单粒子模型; 2.准二维数学模型; 3.简化准二维模型 | 1.物理意义明确; 2.模型精度较高; 3.适用于理论分析 | 1.模型过于复杂; 2.参数整定困难; 3.计算量巨大 |
集总电气参数模型 | 1.Rint模型; 2.Thevenin模型; 3.PNGV模型; 4.GNL模型 | 1.模型简单; 2.可部分反映电池的电化学过程; 3.计算量小; 4.参数易于整定 | 1.模型精度与复杂度难以兼顾; 2.无法反映电化学微观过程 |
基于数据黑箱模型 | 1.神经网络模型; 2.支持向量机模型; 3.模糊逻辑模型 | 1.避开电池复杂的物理过程; 2.较为简单易实现 | 1.可解释性差; 2.模型精度完全受数据质量影响 |
Table 5
Kalman filter-like technology for estimating SOC of lithium battery"
方法名称 | 技术优势 | 技术局限性 |
---|---|---|
KF | 1.可观测非直接测量变量; 2.只需要保存前一时刻状态,占用内存小,计算速度快 | 1.仅适用于线性高斯系统; 2.状态过程和观测方程噪声满足为高斯白噪声 |
EKF | 1.适用于非线性系统; 2.收敛速度较快 | 1.泰勒展开导致算法估算精度较低,且计算量大; 2.截断误差可能导致发散 |
UKF | 1.避免线性化过程产生的误差,算法准确性高; 2.无需线性化近似,计算量小 | 1.初始化后噪声矩阵无法适时调整; 2.误差协方差矩阵负定而造成滤波发散 |
CKF | 1.适用于高维非线性系统; 2.无需线性化近似,计算量小,实时性更好 | 1.不适用复杂加性噪声的动力系统 |
AKF | 1.实时修正误差,更为准确; 2.有效避免算法发散; 3.适应复杂工况 | 1.算法计算量大; 2.算法依赖参数辨识效果 |
模糊卡尔曼滤波 | 1.模糊调节器实时调整噪声协方差矩阵,算法精度高; 2.适用于极端工况 | 1.模糊论域选择高度依赖专家经验; 2.模糊调节器难以设计 |
多新息拓展卡尔曼 | 1.多新息提高EKF精度; 2.充分利用历史信息 | 1.泰勒公式引入截断误差; 2.算法准确性依赖历史信息正确性 |
中心差分卡尔曼 | 1.算法计算速度较快; 2.算法具备更高精度 | 1.过程噪音与测量噪音方差难以量化; 2.算法自适应能力不足 |
Table 6
Neural network technology for lithium battery SOC estimation"
网络类型 | 网络模型优势 | 网络模型局限性 |
---|---|---|
ELM[ | 1.网络结构简单; 2.模型参数少,计算方便且快; 3.技术成熟有效 | 1.仅考虑经验风险,未考虑结构化风险,易陷入过度拟合; 2.受离群异常点影响大; 3.模型参数直接计算,调整困难 |
BPNN[ | 1.可以满足锂电池SOC估计的非线性映射关系; 2.技术成熟有效 | 1.模型参数优化的收敛速度慢; 2.模型性能对参数的初始值敏感,易陷入局部最优值 |
RBF[ | 1.有较强的非线性映射能力,满足SOC非线性要求; 2.模型精度较高; 3.收敛速度快 | 1.模型不具有可解释性; 2.受基函数参数影响; 3. 算法的计算复杂度高 |
NARX[ | 1.具有时间序列分析能力; 2.模型较为简单 | 1. 模型训练速度较慢; 2.模型性能受数据影响很大 |
LSTM[ | 1.强大时间序列分析能力可以反映SOC时序特点; 2.无需特征提取过程,可以完成特征自主学习; 3.预测精度高 | 1.需要假设数据序列是相关的; 2.序列长度受限; 3.模型训练时间长; 4.参数多易过度拟合 |
GRU [ | 1.相比而言参数较少,降低了过拟合风险; 2.强大时间序列分析能力可以反映SOC时序特点 3.预测精度高 | 1.需要假设数据序列是相关的; 2.模型训练时间较长 |
Table 7
SOC estimation technology of lithium battery driven by digital-analog fusion"
混合形式 | 技术特点 | 技术优势 |
---|---|---|
安时积分+ELM[ | 安时积分法估计电池SOC, ELM修正预测误差 | ELM算法预测估计误差弥补安时积分法误差较大的问题 |
EKF+ Elman[ | EKF估计电池SOC,Elman神经网络实时修正电池极化 电压 | 使用Elman神经网络模型提高了锂电池等效模型精度,提升EKF的SOC估计精度 |
EKF+ BP[ | EKF估计电池SOC,BP神经网络计算EKF误差并进行修正 | BP神经网络具有非线性建模能力,能够建立温度变量与SOC值差值,形成误差修正 |
UKF+ BP[ | UKF估计电池SOC,BP神经网络估计初始电池SOC | 初始SOC更为准确,加快UKF的收敛速度 |
EKF+ ANN[ | EKF估计神经网络权值及阈值等参数,利用神经网络预测电池SOC | 通过EKF获取更为准确的神经网络权值及阈值,提升神经网络SOC预测准确性 |
EKF+ LSTM[ | UKF以及LSTM共同估计SOC,利用LSTM估计结果校正UKF结果 | 结合UKF以及LSTM对SOC的估计效果,在多种情况下具有良好SOC估计效果 |
EKF+ SVM[ | EKF估计电池SOC,SVM模型根据电池状态补偿电池参数误差 | 使用SVM保证电池等效模型参数更为准确 |
EKF+ LSSVM[ | EKF估计电池SOC,LSSVM估计电池SOH,建立SOC与SOH联合估计模型 | LSSVM适合短周期SOH估计,从电池健康状态的角度修正电池SOC估计结果 |
Table 8
Performance comparison of lithium battery SOC estimation technology"
方法类型 | 估计方法 | 方法精度 | 方法复杂度 | 方法数据量 | 方法计算量 | 实时检测性 |
---|---|---|---|---|---|---|
基于实验测试计算的估计方法 | 开路电压法[ | ** | * | * | * | * |
放电法[ | ** | *** | * | * | * | |
安时积分法[ | *** | *** | * | ** | *** | |
电导法[ | *** | ** | ** | ** | * | |
交流阻抗法[ | **** | **** | *** | ** | * | |
基于模型驱动的估计方法 | 卡尔曼及其改进滤波[ | *** | *** | *** | *** | **** |
粒子滤波[ | **** | *** | *** | *** | **** | |
H无穷滤波[ | *** | **** | *** | *** | **** | |
基于递推最小二乘滤波[ | *** | *** | *** | *** | **** | |
基于数据驱动的估计方法 | 神经网络类[ | **** | **** | ***** | **** | **** |
支持向量类[ | *** | *** | **** | *** | **** | |
高斯过程回归[ | *** | ** | **** | *** | **** | |
基于数模驱动的估计方法 | 卡尔曼+ 神经网络[ | ***** | ***** | ***** | ***** | **** |
卡尔曼+ 支持向量机[ | ***** | **** | **** | **** | **** |
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