用于热故障检测和定位的抗干扰锂离子电池智能感知技术

IF 1.6 Q4 ENERGY & FUELS
Luyu Tian, Chaoyu Dong, Rui Wang, Yunfei Mu, Hongjie Jia
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引用次数: 0

摘要

锂离子电池广泛应用于电动汽车、电网储能和其他领域。电池组的热故障诊断对于防止热失控影响电池的安全运行和延长循环使用寿命至关重要。因此,本文提出了一种基于深度学习算法的锂离子电池热故障诊断模型,包括三个部分:自动编码器去噪网络、粗掩码生成器和掩码精确调整。自动编码器去噪网络可以降低热成像采集过程中的数据噪声,提高诊断模型的抗干扰能力,确保热失控诊断的准确性。然后,通过粗掩膜生成器和掩膜精确调整,形成两阶段诊断结构,从而实现对热故障电池单元的快速识别、分类和定位。测试结果表明,分割边界更加清晰,能够与原始图像的层次相匹配。热诊断模型对故障电池的识别准确率接近 100%。使用自动编码器去噪后,预测结果比非局部均值去噪提高了 22%,比噪声图像提高了约 32%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anti‐interference lithium‐ion battery intelligent perception for thermal fault detection and localization
Lithium‐ion batteries are widely employed in electric vehicles, power grid energy storage, and other fields. Thermal fault diagnostics for battery packs is crucial to preventing thermal runaway from impairing the safe operation and extended cycle service life of batteries. Therefore, a lithium‐ion battery thermal fault diagnosis model based on deep learning algorithms is presented, which includes three parts: autoencoder denoising network, coarse mask generator, and mask precise adjustment. Autoencoder denoising network can reduce data noise during thermal imaging acquisition, improve the anti‐interference ability of diagnostic models, and ensure the accuracy of thermal runaway diagnosis. A two‐stage diagnostic structure is then formulated by the coarse mask generator and mask precise adjustment, which enable quick identification, categorisation, and localisation of thermal fault battery cells. According to the test results, the segmentation boundary is more distinct and is capable of matching the original image's level. The recognition accuracy of the thermal diagnosis model for faulty batteries is close to 100%. After denoising by the autoencoder, the prediction results improved by 22% compared to non‐local mean denoising and by about 32% compared to noisy images.
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来源期刊
IET Energy Systems Integration
IET Energy Systems Integration Engineering-Engineering (miscellaneous)
CiteScore
5.90
自引率
8.30%
发文量
29
审稿时长
11 weeks
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