Process monitoring through wafer-level spatial variation decomposition

K. Huang, Nathan Kupp, J. Carulli, Y. Makris
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引用次数: 12

Abstract

Monitoring the semiconductor manufacturing process and understanding the various sources of variation and their repercussions is a crucial capability. Indeed, identifying the root-cause of device failures, enhancing yield of future production through improvement of the manufacturing environment, and providing feedback to the designer toward development of design techniques that minimize failure rate rely on such a capability. To this end, we introduce a spatial decomposition method for breaking down the variation of a wafer to its spatial constituents, based on a small number of measurements sampled across the wafer. We demonstrate that by leveraging domain-specific knowledge and by using as constituents dynamically learned, interpretable basis functions, the ability of the proposed method to accurately identify the sources of variation is drastically improved, as compared to existing approaches. We then illustrate the utility of the proposed spatial variation decomposition method in (i) identifying the main contributor to yield variation, (ii) predicting the actual yield of a wafer, and (iii) clustering wafers for production planning and abnormal wafer identification purposes. Results are reported on industrial data from high-volume manufacturing, confirming the ability of the proposed method to provide great insight regarding the sources of variation in the semiconductor manufacturing process.
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通过晶圆级空间变异分解进行过程监控
监控半导体制造过程和了解各种变化的来源及其影响是一个至关重要的能力。事实上,确定设备故障的根本原因,通过改进制造环境来提高未来生产的产量,并向设计人员提供反馈,以开发最大限度地降低故障率的设计技术,这些都依赖于这种能力。为此,我们引入了一种空间分解方法,基于在晶圆片上采样的少量测量值,将晶圆片的变化分解为其空间成分。我们证明,与现有方法相比,通过利用领域特定知识并使用动态学习的可解释基函数作为成分,所提出的方法准确识别变异源的能力得到了极大的提高。然后,我们说明了所提出的空间变化分解方法在以下方面的效用:(i)确定产量变化的主要贡献者,(ii)预测晶圆的实际产量,以及(iii)为生产计划和异常晶圆识别目的对晶圆进行集群。结果报告了来自大批量制造的工业数据,证实了所提出的方法能够提供关于半导体制造过程中变化来源的深刻见解。
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