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Deep learning-driven detection of lithium-plating-type defects for battery manufacturing via formation and capacity grading data
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作者 Yunfeng Huang Hongchang Cai +8 位作者 Xin Lai Yuejiu Zheng Xuebing Han Dongsheng Ren Chaomin Yue Yuebo Yuan Mingwei Pu quanwei chen Minggao Ouyang 《Journal of Energy Chemistry》 2025年第9期536-549,I0014,共15页
Lithium-plating-type defects in lithium-ion batteries pose severe safety risks due to their potential to trigger thermal runaway.To prevent defective batteries from entering the market,developing in-line detection met... Lithium-plating-type defects in lithium-ion batteries pose severe safety risks due to their potential to trigger thermal runaway.To prevent defective batteries from entering the market,developing in-line detection methods during manufacturing is critical yet challenging.This study introduces a deep learning-based method for detecting lithium-plating-type defects using formation and capacity grading data,enabling accurate identification of defective batteries without additional equipment.First,lithiumplating-type defect batteries with various types and area ratios are fabricated.Formation and capacity grading data from 154 batteries(48 defective,106 normal)are collected to construct a dataset.Subsequently,a dual-task deep learning model is then developed,where the reconstruction task learns latent representations from the features,while the classification task identifies the defective batteries.Shapley value analysis further quantifies feature importance,revealing that defective batteries exhibit reduced coulombic efficiency(attributed to irreversible lithium loss)and elevated open-circuit voltage/K-values(linked to self-equalization effects).These findings align with the electrochemical mechanisms of lithium plating,enhancing the model's interpretability.Validated on statistically robust samples shows that the framework achieves a recall of 97.14%for defective batteries and an overall accuracy of 97.42%.This deep learning-driven solution provides a scalable and cost-effective quality control strategy for battery manufacturing. 展开更多
关键词 Lithium-ion batteries Manufacturing defect Lithium plating Detection method Deep learning
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溶胶凝胶法制备复合型微泡腔
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作者 陈全伟 林灏 +2 位作者 廖令琴 谢树森 卢启景 《福光技术》 2022年第2期41-46,共6页
掺杂金属氧化物而形成的多元复合材料在许多方面都有重要的应用,可用于增透膜、滤光片、非线性光学等领域的研究。回音壁模式微腔具有品质因子高,模式体积小的优点,而且其材质为二氧化硅,可以与金属氧化物形成复合型材料,对于材料光学... 掺杂金属氧化物而形成的多元复合材料在许多方面都有重要的应用,可用于增透膜、滤光片、非线性光学等领域的研究。回音壁模式微腔具有品质因子高,模式体积小的优点,而且其材质为二氧化硅,可以与金属氧化物形成复合型材料,对于材料光学性质的研究非常重要。在本文中,使用溶胶凝胶法配置具有掺金属氧化物的溶液,再将金属氧化物溶液附着到二氧化硅微泡腔表面,增加其光学性能,并计算了其模场分布。实验中,制作的金属氧化物溶胶凝胶微泡腔品质因子达到了1.07×10^(7),有很好的非线性效应。通过在微泡腔表面镀上一层掺金属氧化物溶胶凝胶薄膜,有利于下一步高性能光学器件的制备。 展开更多
关键词 溶胶凝胶法 金属氧化物 微泡腔
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