OPTIMIZATION OF PREDICTION AND PREVENTION OF DEFECTS ON METAL BASED ON AI USING VGG16 ARCHITECTURE

Muhtar Kosim, Ari Wibowo, Novandri Tri Setioputro, None Kasda, Dian Susanto
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Abstract

Manufacturing is one of the most valuable industries in the world, it can be automated without limits but still stuck in traditional manual and slow processes. Industry 4.0 is racing to define a new era in digital manufacturing through the implementation of Machine Learning methods. In this era, Machine learning has been widely applied to various fields and will certainly be very good applied in the manufacturing world. One of them is used to predict and prevent defects in metal. The process of predicting and preventing defects in metal is one of the important efforts in improving and maintaining production quality. Accuracy in predicting and preventing defects in metal can be an innovation and competitiveness in technology, both in production methods, and improving product safety and its users. Human operators and inspectors without digital assistance generally can spend a lot of time researching visual data, especially in high-volume production environments. For this reason, there needs to be research in developing Machine Learning technology in an effort to prevent the occurrence of defects in metal. And one of the development of this technology by using Convolutional Neural Network (CNN) architecture Visual Geometry Group 16 layer (VGG16). As for the metal defect dataset with 10 classes with details for training data as many as 17221, and test dataset as many as 4311, From the use of methods and datasets available, has been done training model used and produce very good accuracy, that is equal to 89% and testing with accuracy equal to 76%. And also done Interpreter process against new input data, to know metal defect type, prediction accuracy and appropriate action to prevent and overcome metal defect type result of Interpreter process application.
基于vgg16架构的基于ai的金属缺陷预测与预防优化
制造业是世界上最有价值的行业之一,它可以无限制地自动化,但仍然停留在传统的手工和缓慢的过程中。工业4.0正在竞相通过实施机器学习方法来定义数字制造的新时代。在这个时代,机器学习已经被广泛应用到各个领域,在制造业领域肯定会得到很好的应用。其中之一是用于预测和预防金属缺陷。金属缺陷的预测和预防是提高和保持生产质量的重要手段之一。预测和预防金属缺陷的准确性可以成为技术上的创新和竞争力,无论是在生产方法上,还是在提高产品安全性及其用户方面。没有数字辅助的人工操作人员和检查员通常会花费大量时间研究视觉数据,特别是在大批量生产环境中。因此,有必要研究开发机器学习技术,以防止金属中出现缺陷。其中该技术的开发利用了卷积神经网络(CNN)架构的视觉几何组16层(VGG16)。对于含有10类细节的金属缺陷数据集,用于训练的数据多达17221个,用于测试的数据集多达4311个,从使用的方法和可用的数据集来看,已经做过的训练模型使用并产生了非常好的准确率,即等于89%,测试的准确率等于76%。并对新输入的数据进行了解释器处理,了解金属缺陷类型,预测的准确性和采取相应的措施来预防和克服金属缺陷类型的解释器处理应用结果。
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