基于生产数据的良率过程控制

N. D. Truong, S. Demidenko, G. Merola
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引用次数: 0

摘要

半导体器件制造过程涉及大量复杂的生产步骤,必须精确控制,以达到并保持所需的产量和产品质量规格。因此,从众多与过程相关的传感器中广泛收集数据至关重要。然后,过程控制系统(PCS)利用这些数据来监视和控制制造过程。本文介绍了一项在一家主要半导体器件制造商进行的现实世界研究,其中来自生产线传感器的大量数据由PCS进行分析,以(1)确定与产品良率显著相关的参数;(2)对PCS数据进行回归分析,估计产量。该研究确定了几个关键参数,这些参数可以优化以提高产品收率。关键词:过程控制系统,成品率,制造,回归分析
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Yield Process Control based on the Production Data
Semiconductor device manufacturing process involves a large number of sophisticated production steps that have to be controlled precisely so to achieve and to maintain the required yield and product quality specifications. Therefore, it is critical to employ extensive data collection from numerous process-associated sensors. The data are then utilized by the process control system (PCS) to monitor and control the manufacturing process. This paper presents a real-world study performed at one of the major semiconductor device manufacturers where the massive data from the production line sensors were analyzed by PCS to (1) determine parameters that are significantly correlated with the product yield; and (2) perform a regression analysis to estimate the yield from PCS data. The study enabled to identify several key parameters, that can be optimized to improve the product yield. Keywords—process control system, yield, manufacturing, regression analysis
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