基于视觉计算和深度学习的PCB缺陷检测系统

IF 1 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Iet Circuits Devices & Systems Pub Date : 2023-11-03 DOI:10.1049/2023/6681526
Gabriel Gomes de Oliveira, Gabriel Caumo Vaz, Marcos Antonio Andrade, Yuzo Iano, Leandro Ronchini Ximenes, Rangel Arthur
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引用次数: 0

摘要

随着各电子产品制造商之间的竞争日益激烈,所开发产品的质量以及由此产生的对品牌的信心是公司生存的根本因素。为了保证产品在制造过程中的质量,在电子设备的生产阶段对缺陷进行识别是至关重要的。本文提出了一种基于传统视觉计算和新型深度学习方法的电子器件制造过程缺陷检测系统。所提出的系统的原型被开发和制造,直接用于电子设备的生产线。使用特定的智能手机模型进行测试,该模型有22个关键部件需要检查,结果表明,当该系统直接用于运营生产线时,缺陷检测的平均准确率超过90%。该领域的其他研究在受控的实验室环境中进行测量,并确定较少的关键成分。因此,所提出的方法是一个实时的高性能系统。此外,所提出的系统符合工业4.0的目标,即过程系统数字化是提高指标和优化生产的关键。
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System for PCB Defect Detection Using Visual Computing and Deep Learning for Production Optimization
With the growing competition between the various manufacturers of electronic products, the quality of the products developed and the consequent confidence in the brand are fundamental factors for the survival of companies. To guarantee the quality of the products in the manufacturing process, it is crucial to identify defects during the production stage of an electronic device. This study presents a system based on traditional visual computing and new deep learning methods to detect defects in electronic devices during the manufacturing process. A prototype of the proposed system was developed and manufactured for direct use in the production line of electronic devices. Tests were performed using a particular smartphone model that had 22 critical components to inspect and the results showed that the proposed system achieved an average accuracy of more than 90% in defect detection when it was directly used in the operational production line. Other studies in this field perform measurements in controlled laboratory environments and identify fewer critical components. Therefore, the proposed method is a real-time high-performance system. Furthermore, the proposed system conforms with the Industry 4.0 goal that process system digitization is essential to improve indicators and optimize production.
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来源期刊
Iet Circuits Devices & Systems
Iet Circuits Devices & Systems 工程技术-工程:电子与电气
CiteScore
3.80
自引率
7.70%
发文量
32
审稿时长
3 months
期刊介绍: IET Circuits, Devices & Systems covers the following topics: Circuit theory and design, circuit analysis and simulation, computer aided design Filters (analogue and switched capacitor) Circuit implementations, cells and architectures for integration including VLSI Testability, fault tolerant design, minimisation of circuits and CAD for VLSI Novel or improved electronic devices for both traditional and emerging technologies including nanoelectronics and MEMs Device and process characterisation, device parameter extraction schemes Mathematics of circuits and systems theory Test and measurement techniques involving electronic circuits, circuits for industrial applications, sensors and transducers
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