Journal of Automotive Safety and Energy ›› 2022, Vol. 13 ›› Issue (3): 571-579.DOI: 10.3969/j.issn.1674-8484.2022.03.019
• Automotive Energy Efficiency and Environment Protection • Previous Articles Next Articles
WANG Qiao1(
), WEI Meng1,2(
), YE Min1,*(
), LIAN Gaoqi1, MA Yuchuan1
Received:2021-11-25
Revised:2022-05-11
Online:2022-09-30
Published:2022-10-04
Contact:
YE Min
E-mail:qiaowang@chd.edu.cn;2019025006@chd.edu.cn;mingye@chd.edu.cn
CLC Number:
WANG Qiao, WEI Meng, YE Min, LIAN Gaoqi, MA Yuchuan. Co-estimation of state of charge and capacity of lithium-ion battery based on GWO optimized LSTM and LSSVM[J]. Journal of Automotive Safety and Energy, 2022, 13(3): 571-579.
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URL: https://www.journalase.com/EN/10.3969/j.issn.1674-8484.2022.03.019
| 测试 样本 | Spearman相关性系数 | ||||
|---|---|---|---|---|---|
| 3.6~3.7 V | 3.7~3.8 V | 3.8~3.9 V | 3.9~4.0 V | 完整充电时间 | |
| CX2-1 | 0.699 3 | 0.662 1 | 0.912 6 | 0.963 5 | 0.957 6 |
| CX2-2 | 0.700 2 | 0.651 2 | 0.927 1 | 0.978 5 | 0.972 5 |
| CX2-3 | 0.733 2 | 0.654 3 | 0.931 1 | 0.981 4 | 0.977 5 |
| 测试 样本 | Spearman相关性系数 | ||||
|---|---|---|---|---|---|
| 3.6~3.7 V | 3.7~3.8 V | 3.8~3.9 V | 3.9~4.0 V | 完整充电时间 | |
| CX2-1 | 0.699 3 | 0.662 1 | 0.912 6 | 0.963 5 | 0.957 6 |
| CX2-2 | 0.700 2 | 0.651 2 | 0.927 1 | 0.978 5 | 0.972 5 |
| CX2-3 | 0.733 2 | 0.654 3 | 0.931 1 | 0.981 4 | 0.977 5 |
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