Quality-Oriented Statistical Process Control Utilizing Bayesian Modeling

Kaito Date, Y. Tanaka
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引用次数: 3

Abstract

Quality control is an important issue in semiconductor manufacturing. Statistical process control (SPC) is known as a powerful method for accomplishing process stability and reducing variability. In this paper, we adopt the quality-oriented statistical process control (QOSPC) method. In QOSPC, product quality test data, such as electrical performance and product reliability, are incorporated in the process control procedure. QOSPC has two major challenges: extracting process variables that affect product quality, and determining quality control limits (QCLs) for each variable. In this work, we fully exploit a Bayesian approach to resolve both of these challenges simultaneously. We introduced a linear bathtub model (LBM) that contains parameters corresponding to QCLs as obvious change points and fit the model to the observed data by Bayesian inference (BI). In our experiments with artificial datasets, the values of QCLs and their probability of existence can be estimated robustly by BI. Using the proposed method, the human labor cost for determining QCLs is reduced by 93%.
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利用贝叶斯模型的面向质量的统计过程控制
质量控制是半导体制造中的一个重要问题。统计过程控制(SPC)被认为是实现过程稳定性和减少可变性的有力方法。本文采用面向质量的统计过程控制(QOSPC)方法。在QOSPC中,产品质量测试数据,如电气性能和产品可靠性,被纳入过程控制程序。QOSPC面临两个主要挑战:提取影响产品质量的过程变量,并确定每个变量的质量控制限制(qcl)。在这项工作中,我们充分利用贝叶斯方法来同时解决这两个挑战。我们引入了一个线性浴缸模型(LBM),该模型将qcl对应的参数作为明显的变化点,并通过贝叶斯推理(BI)将模型拟合到观测数据中。在人工数据集的实验中,BI可以稳健地估计出qcl的值及其存在的概率。采用本文提出的方法,人工成本降低了93%。
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