Research on Artificial Intelligence Detection Method of Lithium Battery Surface Defects for Production Line

Jian Wang Jian Wang, Dong-Liang Fan Jian Wang, Jin-Ping Du Dong-Liang Fan, Lei Geng Jin-Ping Du, Ya-Jin Hou Lei Geng
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Abstract

Lithium batteries are widely used in new energy vehicles and electronic equipment. Aiming at the typical defects that are easy to occur in the production process of lithium batteries, this paper improves the performance and recognition accuracy of the algorithm by integrating void convolution and attention mechanism into the YOLOv5 basic framework. At the same time, whale algorithm is used to automatically optimize the algorithm parameters in the process of optimization. Finally, through simulation experiments. This method realizes the rapid and accurate identification of lithium battery defects in the rapid production process of automatic production line.  
生产线锂电池表面缺陷人工智能检测方法研究
锂电池广泛应用于新能源汽车和电子设备。针对锂电池生产过程中容易出现的典型缺陷,本文将空洞卷积和注意机制集成到YOLOv5基本框架中,提高了算法的性能和识别精度。同时,在优化过程中采用鲸鱼算法对算法参数进行自动优化。最后,通过仿真实验。该方法实现了自动化生产线快速生产过程中锂电池缺陷的快速准确识别。
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