Inline quality grading of commercial lithium-ion battery manufacturing via da-ta-efficient learning and transferable assessment

Abstract

Lithium-ion battery manufacturing involves a complex sequence of tightly coupled processes, making reliable quality grading essential for ensuring cell consistency, production efficiency, and product reliability. However, existing grading paradigms rely heavily on long-cycle testing and dense labeling, resulting in energy consumption, time cost, and limited scalability. Here, we propose the Data-Efficient Learning and Transferable Assessment (DELTA) framework, which combines feature extraction and semi-supervised consistency classification for early quality grading in manufacturing, using cycle-life at end of life (EOL) as the quality evaluation metric. The framework evaluates data from 6 publicly available datasets, encompassing 421 cells with 3 battery chemistries, 6 charging rates, 6 temperatures, and 8 rated capacities. A Linear Mixed-Effects model extracts static features to quantify material effects, while dynamic features from pre-cycling tests characterize performance stability. A semi-supervised classifier based on Gaussian Mixture Models with an entropy-driven mechanism simulates the absence of true manufacturing labels. Experimental results show that DELTA achieves over 83% classification accuracy of cycle-life at EOL with only 30% labeled data, outperforming state-of-the-art methods such as FixMatch and UDA, while reducing training time by 50%. It maintains more than 95% accuracy on unseen datasets, enabling fast, low-cost, and scalable battery screening in manufacturing, establishing missingness-aware learning as a practical solution for data-limited manufacturing environments. A preliminary scenario analysis suggests that reducing reliance on long-cycle screening could potentially lower testing-related costs and energy consumption in large-scale battery production.

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Article information

Article type
Paper
Submitted
06 Apr 2026
Accepted
16 Jun 2026
First published
17 Jun 2026

Energy Environ. Sci., 2026, Accepted Manuscript

Inline quality grading of commercial lithium-ion battery manufacturing via da-ta-efficient learning and transferable assessment

C. Liang, S. Tao, C. Xia, X. Huang, H. Hu, R. Wang, D. Dong, Z. Lyu, G. Zhou and H. MO, Energy Environ. Sci., 2026, Accepted Manuscript , DOI: 10.1039/D6EE02209J

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