Energy Storage Science and Technology ›› 2024, Vol. 13 ›› Issue (4): 1266-1276.doi: 10.19799/j.cnki.2095-4239.2024.0098
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Bingjin LI1(), Xiaoxia HAN1(), Wenjie ZHANG1, Weiguo ZENG2, Jinde WU1
Received:
2024-01-30
Revised:
2024-02-05
Online:
2024-04-26
Published:
2024-04-22
Contact:
Xiaoxia HAN
E-mail:2498766025@qq.com;hanxiaoxia@tyut.edu.cn
CLC Number:
Bingjin LI, Xiaoxia HAN, Wenjie ZHANG, Weiguo ZENG, Jinde WU. Review of the remaining useful life prediction methods for lithium-ion batteries[J]. Energy Storage Science and Technology, 2024, 13(4): 1266-1276.
Table 1
Other feature selection"
预测方法 | 参考文献 | 输入特征 | 实验数据 | 评价指标 | 预测误差 |
---|---|---|---|---|---|
SVM | [ | 等压降充电时间差、等压降发电时间差 | NASA CALCE | RMSE | <2.5% |
[ | 电压和温度曲线中的信号能量、曲率指数、凹凸指数、峰度指数 | NASA | RMSE | 0.357% | |
GPR | [ | 放电容量差 | CALCE | MAE RMSE | <1% <1.3% |
[ | 最低放电电压对应时间、等压降放电时间、温度最高点对应时间 | NASA | — | — | |
[ | 恒流充电容量、电阻、峰值电压、电池单体与电池组的不一致性 | 实验数据 | MAE RMSE | 2 1 | |
CNN | [ | 阻抗曲线 | 实验数据 | RMSE | 0.233% |
RNN | [ | 温度、充电速率、SOC | 实验数据 | — | — |
[ | 差分热伏安曲线波峰 | NASA | RMSE | <1% |
Table 2
RUL predictive modeling using mixed methods"
融合方法 | 参考文献 | 实验数据 | 评价指标 | 预测精度 | 特点 |
---|---|---|---|---|---|
LSSVM+双UPF | [ | NASA CALCE | RMSE | 0.0980 | 使用相空间重构将二维数据映射到高维空间,挖掘数据中的隐藏信息 |
PF+LSTM | [ | NASA | MAE | 3.3309 | 构建从测量数据到系统状态的映射 |
PSO+ELM+RVM | [ | NASA CALCE | 循环次数 | <9 | 可以间接预测具有置信区间的RUL |
堆叠回归 | [ | NASA | RMSE MAE | 0.01732 | 将多种回归方法堆叠,需要调整的参数较少 |
CNN+GPR+双指数模型 | [ | [ | — | — | 在早期预测中有优越性 |
双GPR+GRU | [ | NASA CALCE | 循环次数 | <2 | 实际计算复杂度低 |
GPR+LSTM | [ | NASA CALCE MIT-Stanford | RMSE MAE | 0.01057 0.00659 | 在早期预测中有较强的泛化能力和不确定性管理能力 |
集成学习器 | [ | CALCE | RMSE | <0.0274 | 结合RVM、随机森林、弹性网络、自回归模型、LSTM,通过遗传算法确定每个学习器权重。具有较好的鲁棒性和泛化性 |
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