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The classification methodology of chip quality using canonical correlation analysis-based variable selection on chip level data

机译:基于规范相关分析的芯片级数据变量选择的芯片质量分类方法

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The semiconductor manufacturing industry produce lots of information about performance of chips. Among them, process control monitoring (PCM) data that are measured at test element group before probe test are multiple-dimensional information. PCM data are including the device characteristics such as a resistance, capacitance, current, and so on. Fail bit count (FBC) that is the number of defective cells failed by function items of probe test is also multi-dimensional information and gives a direct impact on the yield loss at the probe test step. In this study, we proposed classification methodology using a canonical correlation analysis as variable selection method on chip level data. Through this proposed method, we were able to extract important 22 variables from 77 PCM variables by using the correlation between the multiple FBC variables and PCM variables. As a result, the accuracy of quality classification for a chip is dramatically improved on the probe test.
机译:半导体制造业产生大量有关芯片性能的信息。其中,在探针测试之前在测试元素组处测量的过程控制监视(PCM)数据是多维信息。 PCM数据包括设备特性,例如电阻,电容,电流等。失败位计数(FBC),即因探针测试的功能项而失败的缺陷单元的数量,也是多维信息,它直接影响探针测试步骤的良率损失。在这项研究中,我们提出了使用规范相关分析作为芯片级数据变量选择方法的分类方法。通过这种建议的方法,我们能够通过使用多个FBC变量和PCM变量之间的相关性从77个PCM变量中提取重要的22个变量。结果,在探针测试中显着提高了芯片质量分类的准确性。

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