Aspects of PCB automated quality control using potential function based clustering algorithms

V. Nicolau
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引用次数: 0

Abstract

Video monitoring and inspection of printed circuit boards (PCBs) in manufacturing process is a complex task, being affected by different types of disturbances. In quality control, an automated system based on video inspection should be able to identify different states of good or faulty PCBs. Copper tracks have complex shapes, making analyzing process more difficult. In addition, clustering techniques must deal with unwanted copper material between conductive tracks, which affects dynamic behavior of the circuit. In this paper, clustering algorithms based on potential functions are used in automated video inspection of PCBs copper tracks. Simulation results are presented for two oblong clusters of copper tracks, which are not well separated and difficult to classify. Two situations are discussed, regarding a good PCB and a faulty one, with some copper material between the tracks, which is close enough but contactless with the tracks. Potential function based algorithms (PFBA) are able to identify the complex shapes of copper tracks in good PCBs. Also, they work well in heavy classifying process of the unwanted copper clusters placed very close to conductive tracks.
基于势函数的聚类算法在PCB自动化质量控制中的应用
印制电路板(pcb)在制造过程中的视频监控和检测是一项复杂的任务,受到各种干扰的影响。在质量控制中,基于视频检测的自动化系统应该能够识别良好或有缺陷的pcb的不同状态。铜轨道形状复杂,使分析过程更加困难。此外,聚类技术必须处理导电轨道之间不需要的铜材料,这会影响电路的动态性能。本文将基于势函数的聚类算法应用于pcb铜道的自动视频检测。本文给出了两个长圆形的铜轨道簇的仿真结果,这两个簇分离不好,分类困难。讨论了两种情况,即一个良好的PCB和一个有缺陷的PCB,在轨道之间有一些铜材料,它与轨道足够近,但没有接触。基于势函数的算法(PFBA)能够识别良好pcb中复杂形状的铜道。此外,它们在非常靠近导电轨道的不需要的铜簇的繁重分类过程中工作得很好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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