Comparative Analysis of Neural Networks Techniques for Lithium-ion Battery SOH Estimation

被引:1
作者
Aliberti, Alessandro [1 ]
Boni, Filippo [1 ]
Perol, Alessandro [2 ]
Zampolli, Marco [2 ]
Jaboeuf, Remi Jacques Philibert [2 ]
Tosco, Paolo [2 ]
Macii, Enrico [1 ]
Patti, Edoardo [1 ]
机构
[1] Politecn Torino, Turin, Italy
[2] Edison, Milan, Italy
来源
2022 IEEE 46TH ANNUAL COMPUTERS, SOFTWARE, AND APPLICATIONS CONFERENCE (COMPSAC 2022) | 2022年
关键词
Li-ion battery; State-of-Health; Electric Vehicles; neural networks; Deep Learning; STATE;
D O I
10.1109/COMPSAC54236.2022.00214
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Li-ion batteries have become the most important technology for electric mobility. One of the most pressing challenges is the development of reliable methods for battery state-of-health (SOH) diagnosis and estimation of remaining useful life. In electric mobility scenario, battery capacity degradation prediction is crucial to ensure service availability and life duration. This research work provides a comprehensive comparative analysis of neural networks for a data-driven approach suitable for SOH estimation on single cells, stressed under laboratory conditions. For this purpose, different neural networks (i.e., LSTM, GRU, 1D-CNN, CNN-LSTM) are trained and optimized on NASA Randomized Battery Usage dataset. Experimental results demonstrate that data-driven neural networks generally performed well SOH estimation on single cells. In detail, the 1D-CNN best predicts SOH and has the lowest variance in the output. The LSTM have the highest variance in estimating SOH, while GRU and CNN-LSTM tend to overestimate and underestimate the value of SOH, respectively.
引用
收藏
页码:1355 / 1361
页数:7
相关论文
共 22 条
  • [1] Bole B., RANDOMIZED BATTERY U
  • [2] A Convolutional Neural Network Approach for Estimation of Li-Ion Battery State of Health from Charge Profiles
    Chemali, Ephrem
    Kollmeyer, Phillip J.
    Preindl, Matthias
    Fahmy, Youssef
    Emadi, Ali
    [J]. ENERGIES, 2022, 15 (03)
  • [3] Chung J., 2014, NIPS
  • [4] A Dynamic Spatial-Temporal Attention-Based GRU Model With Healthy Features for State-of-Health Estimation of Lithium-Ion Batteries
    Cui, Shengmin
    Joe, Inwhee
    [J]. IEEE ACCESS, 2021, 9 (09): : 27374 - 27388
  • [5] EU, 2016, COM501
  • [6] Deep learning for time series classification: a review
    Fawaz, Hassan Ismail
    Forestier, Germain
    Weber, Jonathan
    Idoumghar, Lhassane
    Muller, Pierre-Alain
    [J]. DATA MINING AND KNOWLEDGE DISCOVERY, 2019, 33 (04) : 917 - 963
  • [7] Hochreiter S, 1997, NEURAL COMPUT, V9, P1735, DOI [10.1162/neco.1997.9.8.1735, 10.1162/neco.1997.9.1.1, 10.1007/978-3-642-24797-2]
  • [8] A review on the state of health estimation methods of lead-acid batteries
    Jiang, Shida
    Song, Zhengxiang
    [J]. JOURNAL OF POWER SOURCES, 2022, 517
  • [9] Battery State-of-Health Estimation Using Machine Learning and Preprocessing with Relative State-of-Charge
    Jo, Sungwoo
    Jung, Sunkyu
    Roh, Taemoon
    [J]. ENERGIES, 2021, 14 (21)
  • [10] Estimation of Li-ion Battery State of Health based on Multilayer Perceptron: as an EV Application
    Kim, Jungsoo
    Yu, Jungwook
    Kim, Minho
    Kim, Kwangrae
    Han, Soohee
    [J]. IFAC PAPERSONLINE, 2018, 51 (28): : 392 - 397