Fasteners play a critical role in securing various parts of machinery. Deformations such as dents, cracks, and scratches on the surface of fasteners are caused by material properties and incorrect handling of equipment during production processes. As a result, quality control is required to ensure safe and reliable operations. The existing defect inspection method relies on manual examination, which consumes a significant amount of time, money, and other resources; also, accuracy cannot be guaranteed due to human error. Automatic defect detection systems have proven impactful over the manual inspection technique for defect analysis. However, computational techniques such as convolutional neural networks (CNN) and deep learning-based approaches are evolutionary methods. By carefully selecting the design parameter values, the full potential of CNN can be realised. Using Taguchi-based design of experiments and analysis, an attempt has been made to develop a robust automatic system in this study. The dataset used to train the system has been created manually for M14 size nuts having two labeled classes: Defective and Non-defective. There are a total of 264 images in the dataset. The proposed sequential CNN comes up with a 96.3% validation accuracy, 0.277 validation loss at 0.001 learning rate.
翻译:硬质器在确保机械各部分安全方面发挥着关键作用。 固质器表面的凹痕、裂缝和刮痕等变形是由材料特性和生产过程中设备处理不当造成的。 因此,需要质量控制来确保安全可靠的操作。 现有的缺陷检查方法依靠人工检查,这需要大量的时间、金钱和其他资源; 也由于人为错误而无法保证准确性。 自动缺陷检测系统对人工检查技术产生了影响。 然而, 固态神经网络(CNN)和深层学习方法等计算技术都是进化方法。 通过仔细选择设计参数值,CNN就能充分发挥潜力。 利用Taguchi的实验和分析设计,尝试了在这项研究中开发一个强大的自动系统。 用于培训M14大小坚果的数据集是人工生成的,该系统有两个标记等级: 缺陷和非缺陷分析。 数据集中共有264张图像。 拟议的CNNNNCAN连续运行的精确度为96- 13% 校验损失率。 0. 0.77