基于深度学习的工业4.0缺陷检测与分类预测模型

U. Lilhore, Sarita Simaiya, Jasminder Kaur Sandhu, N. K. Trivedi, A. Garg, Aditi Moudgil
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引用次数: 3

摘要

从工业4.0 (IR 4.0)模型的角度来看,深度学习(DL)领域现在对生产行业产生了重大影响。IR 4.0模型促进智能传感器、系统和设备,以建立定期收集信息的智能产业。DL方法通过分析收集到的信息来开发可实现的智能,从而提高生产效率,而无需大幅改变必要的材料。影响组件可靠性的组件缺陷和差异在工业过程中尤为严重。本研究提出了一种基于VGG-16和CNN模型的新框架,将智能生产学习中心创建为工业4.0生产系统。我们描述了在工业检查中识别微小缺陷的问题。主要目标是将与缺陷相关的像素值与最小的假阳性结果进行分类。破坏性与非破坏性检测和分类程序主要用于产品生产后的质量保证。基于机器学习(ML)方法的卷积神经网络(CNN)经常用于此活动。本文研究了复杂迁移学习(TL)策略,该策略允许使用工业产品样本对制造过程中的产品缺陷进行自动检测和分类。对所有已知的性能指标进行了评估,以度量和比较模型的性能。与现有的CNN、VGG-16、EfficientNetB0和Inception V3方法相比,本文提出的带有CNN模型的VGG16在精密度、查全率和准确率方面都有更好的结果。
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Deep Learning-Based Predictive Model for Defect Detection and Classification in Industry 4.0
In the perspective of the Industry 4.0 (IR 4.0) model, the Deep Learning (DL) domain now has a significant impact on the production industry. The IR 4.0 model promotes intelligent sensors, systems, and devices to build intelligent industries that gather information regularly. DL method enables the development of implementable intelligence by analyzing the gathered information to boost production efficiency without dramatically changing the necessary materials. Component defects and discrepancies that impact component reliability are particularly massive in industrial processes. This research introduces a novel framework based on the VGG-16 with CNN model that creates the Intelligent Production learning center into an I4.0 production system. We describe the issue of recognizing tiny defects in an industrial inspection. The primary objective is to classify the pixel value correlating to a defect with a minimal level of false-positive results. Destructive Vs. non-destructive testing and classification procedures are mainly utilized for product quality assurance after production. Convolutional neural networks (CNN) based on machine learning (ML) methods are frequently utilized for this activity. Complex transfer learning (TL) strategies are examined in this research, which allows for the automatic detection and categorization of product defects in the manufacturing process employing industrial product samples. All the known performance metrics have been evaluated to measure and compare the model performance. The proposed VGG16 with CNN model has better outcomes for precision, recall, and accuracy as compared to exisitng CNN, VGG-16, EfficientNetB0, and Inception V3 methods.
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