A Deep Learning-Based Screening Method for Improving the Quality and Reliability of Integrated Passive Devices

Chien-Hui Chuang, Kuan-Wei Hou, Cheng-Wen Wu, Mincent Lee, C. Tsai, Hao Chen, Min-Jer Wang
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引用次数: 1

Abstract

Integrated passive devices (IPDs) have been widely used in advanced packaging of semiconductor chips, to improve their power integrity and impedance matching. There is a growing demand in guaranteeing signal and power integrity for the chips used in safety-critical products, such as those used in automotive, aviation, industrial, and defense systems, where IPDs help improve quality and reliability of the chips. Therefore, IPD testing and screening itself is essential. Note that the cost of replacing failed IPDs is much higher than the cost of manufacturing them, so screening bad IPDs before mounting is also crucial. In this work, we propose a machine learning (ML) based screening methodology to identifying the IPDs that have potential reliability issues. Based on the parametric data of 360,000 IPDs collected from the wafer probing test, the proposed Semiconductor Quality Net (SQnet) is trained to predict the IPDs which have low breakdown voltage, i.e., low reliability. Keeping the overkill rate below 10%, our method can screen out 6 to 15X more bad dies than the existing industrial methods, i.e., DPAT and GDBC.
一种提高集成无源器件质量和可靠性的深度学习筛选方法
集成无源器件已广泛应用于半导体芯片的高级封装,以提高其功率完整性和阻抗匹配性。在保证用于安全关键产品的芯片的信号和电源完整性方面的需求不断增长,例如用于汽车,航空,工业和国防系统的芯片,其中ipd有助于提高芯片的质量和可靠性。因此,IPD检测和筛查本身是必不可少的。请注意,更换失效ipd的成本远高于制造它们的成本,因此在安装之前筛选不良ipd也至关重要。在这项工作中,我们提出了一种基于机器学习(ML)的筛选方法来识别具有潜在可靠性问题的ipd。基于36万个晶圆探测ipd的参数数据,对所提出的半导体质量网络(Semiconductor Quality Net, SQnet)进行训练,预测击穿电压较低的ipd,即可靠性较低的ipd。将过量杀虫率控制在10%以下,与现有的工业方法(DPAT和GDBC)相比,我们的方法可以筛选出6 - 15倍的坏死虫。
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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