A Sampling Decision System for Virtual Metrology in Semiconductor Manufacturing

被引:20
|
作者
Kurz, Daniel [1 ]
De Luca, Cristina [2 ]
Pilz, Juergen [1 ]
机构
[1] Univ Klagenfurt, Dept Stat, A-9020 Klagenfurt, Austria
[2] Infineon Technol Austria AG, A-9500 Villach, Austria
关键词
Bayesian modeling; control charts; decision theory; sampling design; virtual metrology; PREDICTING CVD THICKNESS; INFERENCE; SCHEME;
D O I
10.1109/TASE.2014.2360214
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
In semiconductor manufacturing, metrology operations are expensive and time-consuming, for this reason only a certain sample of wafers is measured. With the need of highly reliable processes, the semiconductor industry aims at developing methodologies covering the gap of missing metrology information. Virtual Metrology turns out to be a promising method; it aims at predicting wafer and/or site fine metrology results in real time and free of costs. In this paper, we present a sampling decision system that relies on virtual measurements suggesting an efficient strategy for measuring productive wafers. Several methods for evaluating when a real measurement is needed (including the expected utility of measurement information, a two-stage sampling decision model and wafer quality risk values) are proposed. We further provide ideas on how to assess and update the reliability of the virtual measurements in a sampling decision system (whenever real measurements become available). In this context, we introduce equipment health factors and virtual trust factors for improving the reliability of the sampling decision system. Finally, the performance of the sampling decision system is demonstrated on a set of virtual and real metrology data from the semiconductor industry. It is shown that wafer measurements are efficiently performed when really needed. Note to Practitioners-Classically, the status of some process is controlled by means of physical measurements, which are only performed within certain intervals of time. In this way, there might be delays in the detection of process abnormalities. Moreover, the classical measurement rules are typically of a statical nature (i.e., the measurement policy is not adapted to current production conditions). In this paper, we propose a new sampling design based on virtual measurements, which are predictions on the location of the real measurements in the control chart depending on the status of the equipment while processing. With the availability of virtual measurements for every wafer, the status of the process can be steadily controlled and process deviations can be realized earlier. Moreover, the usage of virtual measurements allows for adapting the measurement policy to current process conditions. Whenever process abnormalities are signalized by the virtual measurement, a physical measurement needs to be triggered. Therefore, physical metrology operations can be scheduled in a more efficient way.
引用
收藏
页码:75 / 83
页数:9
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