首页> 外文期刊>Journal of Intelligent Manufacturing >Applying the support vector machine with optimal parameter design into an automatic inspection system for classifying micro-defects on surfaces of light-emitting diode chips
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Applying the support vector machine with optimal parameter design into an automatic inspection system for classifying micro-defects on surfaces of light-emitting diode chips

机译:将带有最佳参数设计应用于自动检测系统的支持向量机,用于在发光二极管芯片表面上进行分类微缺陷

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摘要

This study discusses the optimal design of an automatic inspection system for processing light-emitting diode (LED) chips. Based on support vector machine (SVM) with optimal theory, the classifications of micro-defects in light area and electrode area on the chip surface, and develop a robust classification module will be analyzed. In order to design the SVM-based defect classification system effectively, the multiple quality characteristics parameter design. The Taguchi method is used to improve the classifier design, and meanwhile, PCA is used for analysis of multiple quality characteristics on influence of characteristics on multi-class intelligent classifier, to regularly select effective features, and reduce classification data. Aim to reduce the classification data and dimensions, and with features containing higher score of principal component as decision tree support vector machine classification module training basis, the optimal multi-class support vector machine model was established for subdivision of micro-defects of electrode area and light area. The comparison of traditional binary structure support vector machine and neural network classifier was conducted. The overall recognition rate of the inspection system herein was more than 96%, and the classification speed for 500 micro-defects was only 3s. It is clear that we have effectively established an inspection process, which is highly effective even under disturbance. The process can realize the subdivision of micro-defects, and with quick classification, high accuracy, and high stability. It is applicable to precise LED detection and can be used for accurate inspection of LED of mass production effectively to replace visual inspection, economizing on labor cost.
机译:本研究讨论了用于处理发光二极管(LED)芯片的自动检测系统的最佳设计。基于具有最佳理论的支持向量机(SVM),将分析芯片表面上的轻微区域和电极区域的微缺陷的分类,并开发强大的分类模块。为了有效地设计基于SVM的缺陷分类系统,多种质量特征参数设计。 TAGUCHI方法用于改善分类器设计,同时,PCA用于分析多类智能分类器对特性影响的多种质量特征,以定期选择有效功能,并减少分类数据。旨在减少分类数据和尺寸,并且具有包含主成分更高分数的特征作为决策树支持向量机分类模块培训,建立了最佳的多级支持向量机模型,用于细分电极区域的微缺陷和光线区域。进行了传统二元结构支持向量机和神经网络分类器的比较。检查系统的总识别率超过96%,500个微缺陷的分类速度仅为3S。很明显,我们已经有效地建立了一种检查过程,即使在干扰下也是非常有效的。该过程可以实现微缺陷的细分,并且具有快速分类,高精度和高稳定性。它适用于精确的LED检测,可用于精确检查批量生产的LED,有效地替换目视检查,节约劳动力成本。

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