1 |
李建林, 李雅欣, 陈光, 等. 退役动力电池健康状态特征提取及评估方法综述[J]. 中国电机工程学报, 2022, 42(4): 1332-1347.
|
|
LI J L, LI Y X, CHEN G, et al. Research on feature extraction and SOH evaluation methods for retired power battery[J]. Proceedings of the CSEE, 2022, 42(4): 1332-1347.
|
2 |
CHENG M, ZHANG X, RAN A H, et al. Optimal dispatch approach for second-life batteries considering degradation with online SoH estimation[J]. Renewable and Sustainable Energy Reviews, 2023; 173: 113053.
|
3 |
CHEN J M, ZHANG W, GONG B G, et al. Optimal policy for the recycling of electric vehicle retired power batteries[J]. Technological Forecasting and Social Change, 2022, 183: 121930.
|
4 |
WANG J W, DENG Z W, TAO Y, et al. State of health estimation based on modified Gaussian process regression for lithium-ion batteries[J]. Journal of Energy Storage, 2022, 51: 104512.
|
5 |
CHOU J H, WANG F K, LO S C. Predicting future capacity of lithium-ion batteries using transfer learning method[J]. Journal of Energy Storage, 2023, 71: 108120.
|
6 |
WU J, LIU Z L, ZHANG Y, et al. Data-driven state of health estimation for lithium-ion battery based on voltage variation curves[J]. Journal of Energy Storage, 2023, 73: 109191.
|
7 |
LIU J Z, LIU X T. An improved method of state of health prediction for lithium batteries considering different temperature[J]. Journal of Energy Storage, 2023, 63: 107028.
|
8 |
ZHAO J, LI X B, YU D W, et al. Lithium-ion battery state of health estimation using meta-heuristic optimization and Gaussian process regression[J]. Journal of Energy Storage, 2023, 58: 106319.
|
9 |
XIONG X, WANG Y J, LI K Q, et al. State of health estimation for lithium-ion batteries using Gaussian process regression-based data reconstruction method during random charging process[J]. Journal of Energy Storage, 2023, 72: 108390.
|
10 |
LI Q L, LI D Z, ZHAO K, et al. State of health estimation of lithium-ion battery based on improved ant lion optimization and support vector regression[J]. Journal of Energy Storage, 2022, 50: 104215.
|
11 |
ZHANG Z P, MIN H T, GUO H G, et al. State of health estimation method for lithium-ion batteries using incremental capacity and long short-term memory network[J]. Journal of Energy Storage, 2023, 64: 107063.
|
12 |
LIU S Z, CHEN Z Q, YUAN L H, et al. State of health estimation of lithium-ion batteries based on multi-feature extraction and temporal convolutional network[J]. Journal of Energy Storage, 2024, 75: 109658.
|
13 |
FENG H L, LI N J. A multi-feature fusion model based on differential thermal capacity for prediction of the health status of lithium-ion batteries[J]. Journal of Energy Storage, 2023, 72: 108419.
|
14 |
DAI H D, WANG J X, HUANG Y Y, et al. Lightweight state-of-health estimation of lithium-ion batteries based on statistical feature optimization[J]. Renewable Energy, 2023, 119907.
|
15 |
FU S Y, TAO S Y, FAN H T, et al. Data-driven capacity estimation for lithium-ion batteries with feature matching based transfer learning method[J]. Applied Energy, 2024, 353: 121991.
|
16 |
BUCHICCHIO E, DE ANGELIS A, SANTONI F, et al. Battery SOC estimation from EIS data based on machine learning and equivalent circuit model[J]. Energy, 2023, 283: 128461.
|
17 |
ZHANG W C, LI T T, WU W X, et al. Data-driven state of health estimation in retired battery based on low and medium-frequency electrochemical impedance spectroscopy[J]. Measurement, 2023, 211: 112597.
|
18 |
ZHOU Z K, DUAN B, KANG Y Z, et al. Practical state of health estimation for LiFePO4 batteries based on Gaussian mixture regression and incremental capacity analysis[J]. IEEE Transactions on Industrial Electronics, 2023, 70(3): 2576-2585.
|
19 |
ZUO H Y, LIANG J W, ZHANG B, et al. Intelligent estimation on state of health of lithium-ion power batteries based on failure feature extraction[J]. Energy, 2023, 282: 128794.
|
20 |
GUO Y F, YU X Y, WANG Y S, et al. Health prognostics of lithium-ion batteries based on universal voltage range features mining and adaptive multi-Gaussian process regression with Harris Hawks Optimization algorithm[J]. Reliability Engineering & System Safety, 2023, 109913.
|
21 |
王琛, 闵永军. 基于容量增量曲线与GWO-GPR的锂离子电池SOH估计[J]. 储能科学与技术, 2023, 12(11): 3508-3518.
|
|
WANG C, MIN Y J. SOH estimation of lithium-ion batteries based on capacity increment curve and GWO-GPR[J]. Energy Storage Science and Technology, 2023, 12(11): 3508-3518.
|
22 |
陈锐, 丁凯, 祖连兴, 等. 基于AED-CEEMD-Transformer的锂离子电池健康状态估计[J]. 储能科学与技术, 2023, 12(10): 3242-3253.
|
|
CHEN R, DING K, ZU L X, et al. Prediction of state of health of lithium-ion batteries based on the AED-CEEMD-Transformer network[J]. Energy Storage Science and Technology, 2023, 12(10): 3242-3253.
|
23 |
LU Z F, FEI Z C, WANG B F, et al. A feature fusion-based convolutional neural network for battery state-of-health estimation with mining of partial voltage curve[J]. Energy, 2024, 288: 129690.
|
24 |
ZHOU Y, DONG G Z, TAN Q Q, et al. State of health estimation for lithium-ion batteries using geometric impedance spectrum features and recurrent Gaussian process regression[J]. Energy, 2023, 262: 125514.
|
25 |
LIU S Z, NIE Y W, TANG A H, et al. Online health prognosis for lithium-ion batteries under dynamic discharge conditions over wide temperature range[J]. eTransportation, 2023, 18: 100296.
|
26 |
BAI J Q, HUANG J Y, LUO K, et al. A feature reuse based multi-model fusion method for state of health estimation of lithium-ion batteries[J]. Journal of Energy Storage, 2023, 70: 107965.
|
27 |
ZHOU Y F, WANG S L, XIE Y X, et al. Remaining useful life prediction and state of health diagnosis for lithium-ion batteries based on improved grey wolf optimization algorithm-deep extreme learning machine algorithm[J]. Energy, 2023, 285: 128761.
|
28 |
LI Y, WANG S L, CHEN L, et al. Multiple layer kernel extreme learning machine modeling and eugenics genetic sparrow search algorithm for the state of health estimation of lithium-ion batteries[J]. Energy, 2023, 282: 128776.
|
29 |
DONG H, MAO L, QU K Q, et al. State of health estimation and remaining useful life estimation for Li-ion batteries based on a hybrid kernel function relevance vector machine[J]. International Journal of Electrochemical Science, 2022, 17(11): 221135.
|