Identification of Suspicious Semiconductor Devices Using Independent Component Analysis with Dimensionality Reduction

Jenny Bartholomäus, Swen Wunderlich, Z. Sasvári
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Abstract

In the semiconductor industry the reliability of devices is of paramount importance. Therefore, after removing the defective ones, one wants to detect irregularities in measurement data because corresponding devices have a higher risk of failure early in the product lifetime. Furthermore it would be desirable to consider multiple functional tests together due to existing dependencies. This paper presents a method to detect such suspicious devices where the screening is made on transformed measurement data. Additionally, a new dimensionality reduction is performed within the transformation so that the reduced and transformed data comprises only the informative content from the raw data. Therefore the complexity of the subsequent screening steps is simplified.
利用降维独立分量分析识别可疑半导体器件
在半导体工业中,器件的可靠性是至关重要的。因此,在去除缺陷后,人们希望检测到测量数据中的不规则性,因为相应的设备在产品生命周期的早期具有更高的失效风险。此外,由于现有的依赖关系,将多个功能测试放在一起考虑是可取的。本文提出了一种检测此类可疑设备的方法,其中对转换后的测量数据进行筛选。此外,在转换中执行新的降维,以便降维和转换的数据仅包含来自原始数据的信息内容。因此,简化了后续筛选步骤的复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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