Journal of Shanghai Jiao Tong University ›› 2024, Vol. 58 ›› Issue (3): 273-284.doi: 10.16183/j.cnki.jsjtu.2022.347
• New Type Power System and the Integrated Energy • Previous Articles Next Articles
ZHANG Xiaoyuan(), ZHANG Jinhao, YANG Lixin
Received:
2022-09-05
Revised:
2023-01-10
Accepted:
2023-03-03
Online:
2024-03-28
Published:
2024-03-28
CLC Number:
ZHANG Xiaoyuan, ZHANG Jinhao, YANG Lixin. Interval Estimation of State of Health for Lithium Batteries Considering Different Charging Strategies[J]. Journal of Shanghai Jiao Tong University, 2024, 58(3): 273-284.
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URL: https://xuebao.sjtu.edu.cn/EN/10.16183/j.cnki.jsjtu.2022.347
Tab.3
Comparison of SOH estimation of three single cells in CALCE dataset 10-3
单体电池 | 方法 | AIS | MPICD | MAPE |
---|---|---|---|---|
CS35 | QR | -0.1472 | 1.679 | 12.39 |
QRNN | -0.1499 | 3.792 | 11.05 | |
SVQR | -0.0582 | 0.97 | 6.62 | |
GPR | -0.0524 | 3.109 | 16.32 | |
CS37 | QR | -0.1211 | 1.816 | 12.07 |
QRNN | -0.1262 | 1.575 | 10.78 | |
SVQR | -0.0513 | 0.707 | 5.46 | |
GPR | -0.0416 | 0.959 | 14.57 | |
CS38 | QR | -0.1256 | 4.773 | 12.39 |
QRNN | -0.1285 | 2.773 | 11.03 | |
SVQR | -0.0868 | 1.64 | 7.29 | |
GPR | -0.0567 | 2.232 | 18.1 |
Tab.4
Comparison of SOH estimation of three single cells in Oxford dataset 10-3
单体电池 | 方法 | AIS | MPICD | MAPE |
---|---|---|---|---|
Cell3 | QR | -1.946 | 1.91 | 105.36 |
QRNN | -1.614 | 1.68 | 87.19 | |
SVQR | -0.43 | 1.34 | 19.892 | |
GPR | -0.698 | 2.49 | 32.63 | |
Cell7 | QR | -1.904 | 11.19 | 104.17 |
QRNN | -1.567 | 3.96 | 84.75 | |
SVQR | -0.402 | 3.75 | 18.99 | |
GPR | -0.651 | 2.12 | 32.48 | |
Cell8 | QR | -1.929 | 2.709 | 105.35 |
QRNN | -1.611 | 2.57 | 87.51 | |
SVQR | -0.4 | 0.322 | 20.54 | |
GPR | -0.705 | 3.218 | 32.56 |
Tab.5
Comparison of SOH estimation of three single cells in TRI dataset 10-3
单体电池 | 方法 | AIS | MPICD | MAPE |
---|---|---|---|---|
b0c32 | QR | -0.0312 | 1.934 | 12.39 |
QRNN | -0.0283 | 1.2 | 11.05 | |
SVQR | -0.0234 | 1.811 | 6.62 | |
GPR | -0.0411 | 0.035 | 16.326 | |
b0c34 | QR | -0.0304 | 2.274 | 12.07 |
QRNN | -0.0273 | 1.51 | 10.78 | |
SVQR | -0.0198 | 2.67 | 5.46 | |
GPR | -0.0368 | 0.416 | 14.57 | |
b0c35 | QR | -0.0362 | 3.49 | 12.39 |
QRNN | -0.034 | 2.561 | 11.03 | |
SVQR | -0.0331 | 3.972 | 7.29 | |
GPR | -0.0508 | 1.13 | 18.1 |
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