Engineering and TechnologyNature Communications
Deep learning to estimate lithium-ion battery state of health without additional degradation experiments
J. Lu, R. Xiong, et al.
Explore groundbreaking advances in lithium-ion battery technology with a novel deep-learning framework developed by Jiahuan Lu, Rui Xiong, Jinpeng Tian, Chenxu Wang, and Fengchun Sun. This framework estimates battery state of health with remarkable accuracy, eliminating the need for extensive degradation experiments.
Related Publications
Explore these studies to deepen your understanding
Adjacent work that informs or extends this paper's methodology and findings.
Engineering and Technology
Deep learning-based segmentation of lithium-ion battery microstructures enhanced by artificially generated electrodes
S. Müller, C. Sauter, et al.
Engineering and Technology
Identifying degradation patterns of lithium ion batteries from impedance spectroscopy using machine learning
Y. Zhang, Q. Tang, et al.
Engineering and Technology
Realistic fault detection of li-ion battery via dynamical deep learning
J. Zhang, Y. Wang, et al.
Computer Science
Predicting trends in the quality of state-of-the-art neural networks without access to training or testing data
C. H. Martin, T. (. Peng, et al.

