支持SMT组件封装分类的人工神经网络

Yan-Jhih Wang, Yi-Ting Chen, Y. F. Jiang, M. Horng, Chin-Shiuh Shieh, Hung-Yu Wang, Jiun-Huei Ho, Yuh-Ming Cheng
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引用次数: 7

摘要

本文提出了一种基于人工神经网络和电子元件二维模式特征选择的元件封装分类系统(CPCS),用于SMT元件封装系列的分类。包装分类的准确性将严重影响设计制造(DFM)检查的效率。所提出的CPCS可以识别电子元件的二维模式,对SMT元件封装系列进行分类。在这个分类系统中使用的电子元件的二维图形有19个特征。通过实验结果,我们得到了95.8%的分类准确率。一些包装系列如QFN和QFP以及SOD和SODFL相互混淆。CPCS可以通过特定的特征选择来识别这些类型的封装系列。实验结果表明,CPCS能够快速准确地对电子元件的二维图形进行分类,提高了DFM校验的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Artificial Neural Network to Support Package Classification for SMT Components
A components package classification system (CPCS) based on an artificial neural network and feature selection of 2D patterns of electronic components is proposed to classify the package series of SMT components in this study. The accuracy of package classification will seriously influence the efficiency of the Design for manufacture (DFM) Check. The proposed CPCS can identify the 2D pattern of electronic components to classify the package series of SMT components. There are 19 features of the 2D pattern of electronic components to be used in this classification system. Through the experimental results, we got a 95.8% accuracy of classification. Some package series such as QFN and QFP were confused with each other as well as SOD and SODFL. CPCS can identify these kinds of package series by the specific feature selection. The experimental results show that CPCS can quickly and accurately classify the 2D patterns of electronic components to enhance the efficiency of DFM Check.
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