首页> 外文会议> >Reference control model for predicting screen printer quality
【24h】

Reference control model for predicting screen printer quality

机译:参考控制模型,用于预测丝网印刷机的质量

获取原文

摘要

In electronic manufacturing, it is common practice to assure the quality of the final product by performing time-consuming and expensive 100%-tests of finished subassemblies. Integrated test strategies are becoming more important due to the complex process steps and interactions in electronics production and the many parameters that affect the final quality of the products. Today's Surface Mount Technology (SMT) assembly equipment is able to generate huge volumes of data for identification of machine process quality parameters, but most of this information is currently underutilized on the manufacturing floor. Each process step, e.g, component assembly, can be characterized by twelve to thirty parameters. However, it is not easy to analyze these parameters. One promising technique is machine learning based on Data Mining techniques. Using neural networks, many parameters can be compared, and a process model can be generated, even when using "raw " unfiltered process data, as demonstrated in this paper for a solder printing process, characterized by sixteen parameters. The important input parameters, as identified by a neural network model, have been collected either on-or offline to create the core database for extracting the reference model. Each of the datasets contains the x/y/theta-correction, idle time up/down and pre-/post-pressure as well as the average pad-stack coverage. Different test scenarios were run to identify the best-fit reference machine model, This paper compares the results obtained with different configurations of the machine-learning algorithm, in terms of their prediction accuracy, identified model parameters, and model structure. Reference models with up to 99% accuracy have been obtained for actual production scenarios.
机译:在电子制造中,通常的做法是通过执行耗时且昂贵的成品组件100%测试来确保最终产品的质量。由于电子产品生产中复杂的工艺步骤和相互作用以及影响产品最终质量的许多参数,因此集成的测试策略变得越来越重要。当今的表面贴装技术(SMT)组装设备能够生成大量数据,以识别机器过程质量参数,但是目前大多数信息在制造车间都没有得到充分利用。每个过程步骤,例如组件组装,可以通过十二到三十个参数来表征。但是,分析这些参数并不容易。一种有前途的技术是基于数据挖掘技术的机器学习。使用神经网络,可以比较许多参数,并且即使使用“原始的”未经过滤的过程数据也可以生成过程模型,如本文针对焊料印刷过程所证明的那样,该过程以16个参数为特征。由神经网络模型识别的重要输入参数已在线或离线收集,以创建用于提取参考模型的核心数据库。每个数据集都包含x / y / theta校正,空闲时间上/下和前/后压力以及平均焊垫堆叠覆盖率。通过运行不同的测试场景来确定最适合的参考机器模型,本文比较了在机器学习算法的不同配置下获得的结果的预测准确性,确定的模型参数和模型结构。针对实际生产场景,已经获得了精度高达99%的参考模型。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号