Temporal Attention Mechanism Based Indirect Battery Capacity Prediction Combined with Health Feature Extraction

被引:1
作者
Chu, Fanyuan [1 ]
Shan, Ce [2 ]
Guo, Lulu [2 ]
机构
[1] Univ Glasgow, Sch Comp Sci, Glasgow G12 8QQ, Scotland
[2] Tongji Univ, Dept Control Sci & Engn, Shanghai 201804, Peoples R China
关键词
lithium-ion batteries; capacity prediction; deep learning; temporal attention mechanisms; feature extraction; SHORT-TERM-MEMORY; CHARGE ESTIMATION; STATE; LSTM; NETWORK; MODEL; PROGNOSTICS; CHALLENGES; CELLS;
D O I
10.3390/electronics12244951
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The burgeoning utilization of lithium-ion batteries within electric vehicles and renewable energy storage systems has catapulted the capacity prediction of such batteries to a pivotal research frontier in the energy storage domain. Precise capacity prognostication is instrumental not merely in safeguarding battery operation but also in prolonging its operational lifespan. The indirect battery capacity prediction model presented in this study is based on a time-attention mechanism and aims to reveal hidden patterns in battery data and improve the accuracy of battery capacity prediction, thereby facilitating the development of a robust time series prediction model. Initially, pivotal health indicators are distilled from an extensive corpus of battery data. Subsequently, this study proposes an indirect battery capacity prediction model intertwined with health feature extraction, hinged on the time-attention mechanism. The efficacy of the proposed model is assayed through a spectrum of assessment metrics and juxtaposed against other well-entrenched deep learning models. The model's efficacy is validated across various battery datasets, with the Test Mean Absolute Error (MAE) and Test Root Mean Squared Error (RMSE) values consistently falling below 0.74% and 1.63%, respectively, showcasing the model's commendable predictive prowess and reliability in the lithium-ion battery capacity prediction arena.
引用
收藏
页数:25
相关论文
共 43 条
[1]   Transformer Network for Remaining Useful Life Prediction of Lithium-Ion Batteries [J].
Chen, Daoquan ;
Hong, Weicong ;
Zhou, Xiuze .
IEEE ACCESS, 2022, 10 :19621-19628
[2]   Self-attention (SA) temporal convolutional network (SATCN)-long short-term memory neural network (SATCN-LSTM): an advanced python']python code for predicting groundwater level [J].
Ehteram, Mohammad ;
Ghanbari-Adivi, Elham .
ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2023, 30 (40) :92903-92921
[3]  
Feng Qiaozhi, 2023, 2023 IEEE Symposium on Computers and Communications (ISCC), P1242, DOI 10.1109/ISCC58397.2023.10217886
[4]   A Novel Electricity Theft Detection Scheme Based on Text Convolutional Neural Networks [J].
Feng, Xiaofeng ;
Hui, Hengyu ;
Liang, Ziyang ;
Guo, Wenchong ;
Que, Huakun ;
Feng, Haoyang ;
Yao, Yu ;
Ye, Chengjin ;
Ding, Yi .
ENERGIES, 2020, 13 (21)
[5]  
Guangcai Zhao, 2021, 2021 China Automation Congress (CAC), P2179, DOI 10.1109/CAC53003.2021.9727496
[6]   A review of lithium-ion battery state of charge estimation and management system in electric vehicle applications: Challenges and recommendations [J].
Hannan, M. A. ;
Lipu, M. S. H. ;
Hussain, A. ;
Mohamed, A. .
RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2017, 78 :834-854
[7]   Battery Health Prediction Using Fusion-Based Feature Selection and Machine Learning [J].
Hu, Xiaosong ;
Che, Yunhong ;
Lin, Xianke ;
Onori, Simona .
IEEE TRANSACTIONS ON TRANSPORTATION ELECTRIFICATION, 2021, 7 (02) :382-398
[8]   Transfer Learning with Deep Convolutional Neural Network for SAR Target Classification with Limited Labeled Data [J].
Huang, Zhongling ;
Pan, Zongxu ;
Lei, Bin .
REMOTE SENSING, 2017, 9 (09)
[9]   Overview of Machine Learning Methods for Lithium-Ion Battery Remaining Useful Lifetime Prediction [J].
Jin, Siyu ;
Sui, Xin ;
Huang, Xinrong ;
Wang, Shunli ;
Teodorescu, Remus ;
Stroe, Daniel-Ioan .
ELECTRONICS, 2021, 10 (24)
[10]  
Jozefowicz R, 2015, PR MACH LEARN RES, V37, P2342