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Optimization of Deep Learning Model Parameters in Classification of Solder Paste Defects

机译:焊膏缺陷分类中深度学习模型参数的优化

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Mass production processes of printed circuit boards (PCBs) are interrupted due to problems caused by soldering defects during the assembly of surface-mounted semiconductor electronics components to PCBs. This situation causes both an increase in production processes and costs and a decrease in production quality. Increasing production processes due to solder paste defects on PCBs, which can generally be detected at the final stage of the mass production process, cause the test processes of especially strategic projects to be disrupted. In this study, a deep learning model whose model parameters are estimated with population-based optimization algorithm that mimics atomic motion is proposed in order to detect the solder paste defects on PCBs at the early phase of the mass production process. AlexNet, one of the architectures with the least model complexity, is chosen for the convolutional neural network (CNN) model. The proposed optimization algorithm plays an important role in improving the performance of the model. In the study, six types classes are used, consisting of correct soldering, incorrect soldering, missing soldering, excess soldering, short circuit and undefined object. The performance of the proposed model has been experimentally tested and compared with the particle swarm optimization (PSO) based model approach. The results obtained confirm that the proposed model is satisfactorily successful in detecting solder paste defects on the PCB.
机译:由于在将表面上安装的半导体电子元件组装到PCB的表面上的半导体电子元件期间引起的问题,印刷电路板(PCB)的批量生产过程被中断。这种情况导致生产过程和成本的增加和生产质量下降。由于PCB上的焊膏缺陷,通常可以在批量生产过程的最终阶段检测到的焊膏缺陷,导致尤其是战略项目的测试过程被扰乱。在该研究中,利用基于人口的优化算法估计了模型参数的深度学习模型,提出了模拟原子运动,以便在批量生产过程的早期检测PCB上的焊膏缺陷。亚历克网是卷积神经网络(CNN)模型的具有最小复杂性的架构之一。所提出的优化算法在提高模型的性能方面起着重要作用。在该研究中,使用六种类型的类,由正确的焊接,不正确的焊接,缺失焊接,过量焊接,短路和未定义物体组成。所提出的模型的性能已经通过实验测试并与基于粒子群优化(PSO)的模型方法进行了实验测试。得到的结果证实,该拟议的模型在检测PCB上的焊膏缺陷方面是令人满意的。

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