Title :
Semiconductor Manufacturing Process Monitoring Using Gaussian Mixture Model and Bayesian Method With Local and Nonlocal Information
Author_Institution :
Sch. of Mechatron. Eng. & Autom., Shanghai Univ., Shanghai, China
Abstract :
Fault detection has been recognized in the semiconductor industry as an effective component of advanced process control framework in increasing yield and product quality. Principal component analysis (PCA) has been applied widely to semiconductor manufacturing process monitoring. However, the unique characteristics of semiconductor processes - high dimension of data, nonlinearity in most batch processes, and multimodal batch trajectories due to multiple operating conditions - significantly limit applicability of PCA to semiconductor manufacturing. This paper proposes a manifold learning algorithm, local and nonlocal preserving projection (LNPP), for feature extraction. Different from PCA, which aims to discover the global structure of Euclidean space, LNPP can find a good linear embedding that preserves local and nonlocal information. This may enable LNPP to find meaningful low-dimensional information hidden in high-dimensional observations. The Gaussian mixture model (GMM) is applied to handle process data with nonlinearity or multimodal features. GMM-based Mahalanobis distance is proposed to assess process states, and a Bayesian inference-based method is proposed to provide the process failure probability. A variable replacing-based contribution analysis method is developed to identify the process variables that are responsible for the onset of process fault. The proposed monitoring model is demonstrated through its application to a batch semiconductor etch process.
Keywords :
Bayes methods; Gaussian distribution; batch processing (industrial); failure analysis; feature extraction; principal component analysis; process monitoring; semiconductor device manufacture; semiconductor industry; Bayesian inference; Bayesian method; Euclidean space; GMM-based Mahalanobis distance; Gaussian mixture model; advanced process control; batch process; batch semiconductor etch process; fault detection; feature extraction; high-dimensional observations; low-dimensional information; manifold learning; multimodal batch trajectory; multimodal features; nonlocal information; nonlocal preserving projection; principal component analysis; process failure probability; semiconductor industry; semiconductor manufacturing process monitoring; Feature extraction; Manifolds; Manufacturing processes; Monitoring; Principal component analysis; Semiconductor device modeling; Semiconductor process modeling; Bayesian inference; Gaussian mixture model (GMM); fault detection; local and nonlocal preserving projection (LNPP); semiconductor manufacturing process;
Journal_Title :
Semiconductor Manufacturing, IEEE Transactions on
DOI :
10.1109/TSM.2012.2192945