Multilevel Lasso applied to Virtual Metrology in semiconductor manufacturing

S. Pampuri, A. Schirru, G. Fazio, G. Nicolao
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引用次数: 33

Abstract

In semiconductor manufacturing, the state of the art for wafer quality control is based on product monitoring and feedback control loops; the related metrology operations, that usually involve scanning electron microscopes, are particularly cost-intensive and time-consuming. It is therefore not possible to evaluate every wafer: commonly, a small subset of a productive lot is measured at the metrology station and delegated to represent the whole lot. Virtual Metrology (VM) methodologies aim to obtain reliable estimates of metrology results without actually performing measurement operations; this goal is usually achieved by means of statistical models, linking process data and context information to target measurements. In this paper, we tackle two of the most important issues in VM: (i) regression in high dimensional spaces where few variables are meaningful, and (ii) data heterogeneity caused by inhomogeneous production and equipment logistics. We propose a hierarchical framework based on ℓ1-penalized machine learning techniques and solved by means of multitask learning strategies. The proposed methodology is validated on actual process and measurement data from the semiconductor manufacturing industry.
多能级套索在半导体制造虚拟计量中的应用
在半导体制造业中,晶圆质量控制的最新技术是基于产品监控和反馈控制回路;相关的计量操作,通常涉及扫描电子显微镜,特别成本密集和耗时。因此,不可能评估每个晶圆片:通常,在计量站测量生产批次的一小部分,并委托代表整个批次。虚拟计量(VM)方法的目的是在不实际执行测量操作的情况下获得可靠的计量结果估计;这一目标通常通过统计模型来实现,将过程数据和上下文信息与目标测量联系起来。在本文中,我们解决了VM中两个最重要的问题:(i)在高维空间中的回归,其中很少有变量是有意义的,以及(ii)由非同质生产和设备物流引起的数据异质性。我们提出了一个基于1惩罚机器学习技术的分层框架,并采用多任务学习策略进行求解。所提出的方法在半导体制造业的实际过程和测量数据上得到了验证。
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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