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LOGIC product yield analysis by Wafer Bin Map pattern recognition supervised neural network

机译:基于Wafer Bin Map模式识别监督神经网络的LOGIC产品产量分析

摘要

[[abstract]]Wafer Bin Maps (WBMs) are important for yield improvement to trace root causes. The characteristic of WBMs patterns are formed by processes, so process engineers can collect clues from the patterns and correlate them with specific processes, and this can save much time and efforts in finding the root causes. However, the existing learning algorithms have the main shortage of product dependency. For this reason, this work adopted a supervised learning methodology to develop an on-line WBMs pattern recognition system that maps WBMs into 70×70 binary images to solve this issue. Furthermore, this work also proposed a learning scheme to recognize repeating failures that are usually viewed as random pattern in the existing approaches
机译:[[摘要]]晶圆盒贴图(WBM)对于提高产量以追踪根本原因很重要。 WBM模式的特征是由过程形成的,因此过程工程师可以从模式中收集线索并将它们与特定过程相关联,这样可以节省大量时间和精力来寻找根本原因。然而,现有的学习算法主要缺乏产品依赖性。因此,这项工作采用了监督学习方法来开发在线WBM模式识别系统,该系统将WBM映射为70×70二进制图像来解决此问题。此外,这项工作还提出了一种识别重复故障的学习方案,在现有方法中通常将其视为随机模式

著录项

  • 作者

    Chen F.L.;

  • 作者单位
  • 年度 2010
  • 总页数
  • 原文格式 PDF
  • 正文语种 [[iso]]en
  • 中图分类

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