基于电气故障分析数据的SRAM位元缺陷识别方法

Hyungtae Kim, Geonho Kim, Li Yunrong, Ji-hyeok Jeong, Youngdae Kim
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引用次数: 0

摘要

静态随机存取存储器(SRAM)由于其高密度和最小特征尺寸对工艺缺陷敏感,一直被用作新技术开发的载体。此外,由于结构高度结构化,可以准确预测故障位置。因此,快速准确的SRAM失效分析对于新技术学习和开发的成功至关重要。通过传统的物理失效分析技术来识别缺陷通常非常耗时。在本文中,我们提出了一种基于特殊测试设计(DFT)特征的位单元晶体管模拟特性,直接位单元访问(DBA)的快速、高精度SRAM位单元故障的先进缺陷识别方法。该技术具有时间效率高的测试方法和基于电气故障分析(EFA)而不进行破坏性分析的直观故障分析方法,从而缩短了FA的吞吐时间。此外,利用所提出的缺陷识别方法可以同时分析和改进晶圆中的所有缺陷。本文还讨论了一些成功的案例,以证明所提出的缺陷识别方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SRAM Bitcell Defect Identification Methodology Using Electrical Failure Analysis Data
Static Random Access Memory (SRAM) has long been used for a new technology development vehicle because it is sensitive to process defects due to its high density and minimum feature size. In addition, failure location can be accurately predicted because of the highly structured architecture. Thus, fast and accurate Failure Analysis (FA) of the SRAM failure is crucial for the success of new technology learning and development. It is often quite time consuming to identify defects through conventional physical failure analysis techniques. In this paper, we present an advanced defect identification methodology for SRAM bitcell failures with fast speed and high accuracy based on the bitcell transistor analog characteristics from special design for test (DFT) features, Direct Bitcell Access (DBA). This technique has the advantage to shorten FA throughput time due to a time efficient test method and an intuitive failure analysis method based on Electrical Failure Analysis (EFA) without destructive analysis. In addition, all the defects in a wafer can be analyzed and improved simultaneously utilizing the proposed defect identification methodology. Some successful case studies are also discussed to demonstrate the efficiency of the proposed defect identification methodology.
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