Journal of Automotive Safety and Energy ›› 2022, Vol. 13 ›› Issue (3): 541-549.DOI: 10.3969/j.issn.1674-8484.2022.03.016
• Automotive Energy Efficiency and Environment Protection • Previous Articles Next Articles
WEI Meng1,2(
), WANG Qiao1, YE Min1,*(
), LIAN Gaoqi1, XU Xinxin1,3
Received:2022-02-09
Revised:2022-04-28
Online:2022-09-30
Published:2022-10-04
Contact:
YE Min
E-mail:weimeng@chd.edu.cn;mingye@chd.edu.cn
CLC Number:
WEI Meng, WANG Qiao, YE Min, LIAN Gaoqi, XU Xinxin. Remaining useful life prediction of lithium-ion batteries based on dropout Monte Carlo recurrent neural network[J]. Journal of Automotive Safety and Energy, 2022, 13(3): 541-549.
Add to citation manager EndNote|Ris|BibTeX
URL: https://www.journalase.com/EN/10.3969/j.issn.1674-8484.2022.03.016
| 方法 | 电池标号 | 误差 / % | ||
|---|---|---|---|---|
| RMSE | MAE | MAPE | ||
| ELM | #5 | 3.13 | 2.88 | 2.13 |
| #6 | 3.37 | 3.21 | 2.89 | |
| #7 | 3.03 | 2.41 | 1.66 | |
| NARX | #5 | 2.96 | 2.02 | 1.51 |
| #6 | 2.97 | 2.03 | 1.60 | |
| #7 | 1.65 | 1.63 | 1.26 | |
| dropout_MC LSTM | #5 | 1.69 | 1.33 | 0.98 |
| #6 | 2.40 | 1.93 | 1.57 | |
| #7 | 1.53 | 1.49 | 1.23 | |
| 方法 | 电池标号 | 误差 / % | ||
|---|---|---|---|---|
| RMSE | MAE | MAPE | ||
| ELM | #5 | 3.13 | 2.88 | 2.13 |
| #6 | 3.37 | 3.21 | 2.89 | |
| #7 | 3.03 | 2.41 | 1.66 | |
| NARX | #5 | 2.96 | 2.02 | 1.51 |
| #6 | 2.97 | 2.03 | 1.60 | |
| #7 | 1.65 | 1.63 | 1.26 | |
| dropout_MC LSTM | #5 | 1.69 | 1.33 | 0.98 |
| #6 | 2.40 | 1.93 | 1.57 | |
| #7 | 1.53 | 1.49 | 1.23 | |
| [1] | LI Yi, LIU Kailong, Foley A M, et al. Data-driven health estimation and lifetime prediction of lithium-ion batteries: A review[J]. Renew Sustain Energy Reviews, 2019, 113: 1-18 |
| [2] | YAO Fang, HE Wenxuan, WU Youxi, et al. Remaining useful life prediction of lithium-ion batteries using a hybrid model[J]. Energy, 2022, 248: 1-13. |
| [3] | 来鑫, 孟正, 韩雪冰, 等. 基于特征电压模型的锂离子电池容量估计与RUL预测[J]. 汽车安全与节能学报, 2022, 13(1): 194-201. |
| LAI Xin, MENG Zheng, HAN Xuebing, et al. State of health estimation and remaining useful life prediction of lithium-ion battery based on characteristic voltage model[J]. J Automotive Safe Energy, 2022, 13(1): 194-201. (in Chinese) | |
| [4] | 张宏. 基于数据挖掘的汽车运行数据采集设备故障诊断方法[J]. 汽车安全与节能学报, 2019, 10(1): 54-59. |
| ZHANG Hong. Fault diagnosis method of vehicle driving data acquisition devices based on data mining[J]. J Automotive Safe Energy, 2019, 10(1): 54-59. (in Chinese) | |
| [5] | LI Wenhua, JIAO Zhipeng, DU Le, et al. An indirect RUL prognosis for lithium-ion battery under vibration stress using Elman neural network[J]. Int’l J Hydrog Energy, 2019, 44(23): 12270-12276. |
| [6] | 周頔, 宋显华, 卢文斌, 等. 基于日常片段充电数据的锂电池健康状态实时评估方法研究[J]. 中国电机工程学报, 2019, 39(1):105-111. |
| ZHOU Di, SANG Xianhua, LU Wenbin, et al. Real-time SOH estimation algorithm for lithium-ion batteries based on daily segment charging data[J]. Proc CSEE, 2019, 39(1):105-111. (in Chinese) | |
| [7] |
ZHANG Chenbin, CHEN Zonghai, WU Ji. An online method for lithium-ion battery remaining useful life estimation using importance sampling and neural networks[J]. Appl Energy, 2016; 173:134-40.
doi: 10.1016/j.apenergy.2016.04.057 URL |
| [8] | XIONG Rui, ZHANG Yongzhi, WANG Ju, et al. Lithium-Ion battery health prognosis based on a real battery management system used in electric vehicles[J]. IEEE Trans Vehi Technol. 2019; 68:4110-21. |
| [9] | 马彦, 陈阳, 张帆, 等. 基于扩展H_∞粒子滤波算法的动力电池寿命预测方法[J]. 机械工程报, 2019, 55(20): 36-43. |
| MA Yan, CHEN Yang, ZHANG Fan, et al. Remaining useful life prediction of power battery based on extend H_∞ particle filter algorithm[J]. J Mech Engi, 2019, 55(20): 36-43. (in Chinese) | |
| [10] | FENG Hailin, SANG Dandan. A health indicator extraction based on surface temperature for lithium-ion batteries remaining useful life prediction[J]. J Energy Storage, 2021, 34:1-13. |
| [11] | TIAN Jiaqiang, WANG Yujie, CHEN Zonghai. An improved single particle model for lithium-ion batteries based on main stress factor compensation[J]. J Clean Prod, 2021, 278: 1-12. |
| [12] | HAN Sangwo, TANG Yifan, Rahimian S K. A numerically efficient method of solving the full-order pseudo-2-dimensional (P2D) Li-ion cell model[J]. J Power Sources, 2021, 490: 1-13. |
| [13] | Hettiarachchi D, Rajakaruna S, Ghosh A. A new approach to identify the optimum frequency ranges of the constituent storage devices of a hybrid energy storage system using the empirical mode decomposition technique[J]. J Energy Storage, 2022, 51: 1-11. |
| [14] | SUN Xiaofei, ZHONG Kai, HAN Min. A hybrid prognostic strategy with unscented particle filter and optimized multiple kernel relevance vector machine for lithium-ion battery[J]. Measurement, 2021, 170: 1-14. |
| [15] |
Jcoutoa L D, Schorscha J, Jobb N, et al. State of health estimation for lithium ion batteries based on an equivalent-hydraulic model: An iron phosphate application[J]. J Energy Storage, 2019, 21: 259-271.
doi: 10.1016/j.est.2018.11.001 URL |
| [16] |
舒星, 刘永刚, 申江卫, 等. 基于改进最小二乘支持向量机与Box-Cox变换的锂离子电池容量预测[J]. 机械工程学报, 2021, 57(14): 118-128.
doi: 10.3901/JME.2021.14.118 |
| LIU Xing, LIU Yonggang, SHEN Jiangwei, et al. Capacity prediction for lithium-ion batteries based on improved least squares support vector machine and box-cox transformation[J]. J Mech Engi, 2021, 57(14): 118-128. (in Chinese) | |
| [17] |
CAI Lei, MENG Jinhao, Stroe D I, et al. Multi objective optimization of data-driven model for lithium-ion battery SOH estimation with short-term feature[J]. IEEE Trans Power Elect, 2020, 35(11): 11855 -11864.
doi: 10.1109/TPEL.2020.2987383 URL |
| [18] | WANG Jinwei, DENG Zhongwei, YU Tao, et al. State of health estimation based on modified Gaussian process regression for lithium-ion batteries[J]. J Energy Storage, 2022, 51: 1-12. |
| [19] |
GUO Pengyao, CHENG Ze, YANG Lei. A data-driven remaining capacity estimation approach for lithium-ion batteries based on charging health feature extraction[J]. J Power Sources, 2019, 412: 442-450.
doi: 10.1016/j.jpowsour.2018.11.072 URL |
| [20] |
REN Lei, CHENG Xuejun, WANG Xiaokang, et al. Multi-scale dense gate recurrent unit networks for bearing remaining useful life prediction[J]. Future Gener Comput Syst, 2019, 94:601-609
doi: 10.1016/j.future.2018.12.009 URL |
| [21] | LI Penghua, ZHANG Zijian, XIONG Qingyu, et al. State-of-health estimation and remaining useful life prediction for the lithium-ion battery based on a variant long short term memory neural network[J]. J Power Sources, 2020, 459:1-12. |
| [22] | Gal Y, Ghahramani Z. Dropout as a Bayesian approximation: representing model-uncertainty in deep learning[C]// The 33rd Int’l Conf Mach Learning, 2016: 1050-1059. |
| [23] | 陈则王, 李福胜, 林娅. 基于GA-ELM的锂离子电池RUL间接预测方法[J]. 计量学报, 2020, 41(6): 735-742. |
| CHEN Zewang, LI Fusheng, LIN Ya, et al. Indirect prediction method of RUL for lithium-ion battery based on GA-ELM[J]. Acta Metrologica Sinica, 2020, 41(6): 735-742. (in Chinese) | |
| [24] | GOU Bin, XU Yan, FENG Xue, State-of-health estimation and remaining-useful-life prediction for lithium-ion battery using a hybrid data-driven method[J]. IEEE Trans Vehi Tech, 2020, 60(10) 10854-10867. |
| [25] | ZHANG Yongzhi, XIONG Rui, HE Hongwen, et al. Lithium-ion battery remaining useful life prediction with Box-Cox transformation and Monte Carlo simulation[J]. IEEE Trans Indu Electron. 2019, 66(2) 1585-1597. |
| [26] | 庞晓琼, 王竹晴, 曾建潮, 等. 基于PCA-NARX的锂离子电池剩余使用寿命预测[J]. 北京理工大学学报, 2019, 39(4): 406-412. |
| PANG Xiaoqiong, WANG Zhuqing, ZANG Jianchao, et al. Prediction for remaining useful life of lithium-ion battery based on PCA-NARX[J]. Transa Beijing Inst of Tech, 2019, 39(4): 406-412. (in Chinese) | |
| [27] | Saha B, Goebel K. Battery data set[EB/OL]. (2019-05-10). https://ti.arc.nasa.gov/tech/dash/groups/pcoe/prognostic-data-repository. |
| [28] | LI Xiaoyu, YUAN Changgui, LI Xiaohui, et al. State of health estimation for Li-ion battery using incremental capacity analysis and Gaussian process regression[J]. Energy, 2020, 190: 1-12. |
| [29] | 王冉, 后麒麟, 石如玉, 等. 基于变分模态分解与集成深度模型的锂电池剩余寿命预测方法[J]. 仪器仪表学报, 2021, 42(4): 111-120. |
| WANG Ran, HOU Qilin, SHI Ruyu, et al. Remaining useful life prediction method of lithium battery based on variational mode decomposition and integrated deep model[J]. Chin J Sci Instr, 2021, 42(4): 111-120. (in Chinese) | |
| [30] | Pajovic M, Orlik P, Wada T. Remaining useful life estimation of batteries using dirichlet process with variational bayes inference[C]// 2018: 2729-2735. |
| [1] | XIA Huaicheng, HAN Xiangyang, HU Kuanda. Influence of the speed and load on the tire-pressure monitoring- system performances by frequency method [J]. Journal of Automotive Safety and Energy, 2022, 13(3): 429-437. |
| [2] | LIU Tao, CHI Ting, WANG Di, WU Zhenxin, ZHANG Zhenglong. Brake model updating of automatic emergency braking system simulation test [J]. Journal of Automotive Safety and Energy, 2022, 13(3): 502-508. |
| [3] | SHAN Chunxian, XIA Dengfu, LIU Zhaoyang, TANG Aikun. Experimental study on power battery thermal managment system based on thermoelectric-coupling liquid-cooling [J]. Journal of Automotive Safety and Energy, 2022, 13(3): 535-540. |
| [4] | 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. |
| [5] | YONG Jiawang, LI Yansong, FENG Nenglian, LIU Yahui. Adaptive automatic emergency braking control strategy based on an ESHB system [J]. Journal of Automotive Safety and Energy, 2022, 13(2): 300-308. |
| [6] | WANG Donglin, HU Zichen, ZHAO Liang, JIN Pengfei, TANG Liang. Submarining injury mechanism and its protect measures for rear seat occupant under frontal impact [J]. Journal of Automotive Safety and Energy, 2021, 12(4): 467-474. |
| [7] | LONG Yongcheng, HAO Haizhou, LI Fan, FEI Jing. Biofidelity of current legform impactor in pedestrian safety test [J]. Journal of Automotive Safety and Energy, 2021, 12(4): 475-482. |
| [8] | SUN Zhendong, ZHU Haitao, PENG Weiqiang. Influence of AEB for THOR 50th dummy seating position [J]. Journal of Automotive Safety and Energy, 2021, 12(4): 499-506. |
| [9] | BIAN Jiang, WANG Xiaoying, GUI Liangjin, FAN Zijie. Experiments and simulations of bimetal drum brakes at high temperature conditions [J]. Journal of Automotive Safety and Energy, 2021, 12(2): 173-179. |
| [10] | LI Wenli, ZHANG Yousong, HAN Di, QIAN Hong, SHI Xiaohui. Vehicle autonomous collision avoidance decision control model based on deep reinforcement learning [J]. Journal of Automotive Safety and Energy, 2021, 12(2): 201-209. |
| [11] | LI Xueyun, ZHANG Ju. Design of AFS variable steering ratio considering road adhesion coefficient and vehicle speed [J]. Journal of Automotive Safety and Energy, 2020, 11(3): 329-336. |
| [12] | XU Xiaoming, YUAN Qiuqi, ZHANG Yangjun, HU Hao. Numerical analysis of thermal runaway of lithium-ion battery by heating form polar [J]. Journal of Automotive Safety and Energy, 2020, 11(3): 388-396. |
| [13] | LIU Zhongxiao, GE Hao, LI Zhe, ZHANG Yakun, ZHANG Jianbo. Distribution and characteristics of degradation of lithium ion batteries cycled at low temperature [J]. Journal Of Automotive Safety And Energy, 2019, 10(4): 502-510. |
| [14] | WANG Feng, LUO Yutao. Parameter optimization and energy management of hybrid energy storage system based on battery life [J]. Journal Of Automotive Safety And Energy, 2019, 10(2): 211-218. |
| [15] | HUANG Jie, LIU Xi, HU Yuanzhi, et al. Protection effect on rear seat female occupant by airbag-belt [J]. Journal of Automotive Safety and Energy, 2019, 10(1): 74-81. |
| Viewed | ||||||
|
Full text |
|
|||||
|
Abstract |
|
|||||