Title :
Simplified Subspaced Regression Network for Identification of Defect Patterns in Semiconductor Wafer Maps
Author :
Adly, Fatima ; Alhussein, Omar ; Yoo, Paul D. ; Al-Hammadi, Yousof ; Taha, Kamal ; Muhaidat, Sami ; Young-Seon Jeong ; Uihyoung Lee ; Ismail, Mohammed
Author_Institution :
Khalifa Semicond. Res. Center, Khalifa Univ., Abu Dhabi, United Arab Emirates
Abstract :
Wafer defects, which are primarily defective chips on a wafer, are of the key challenges facing the semiconductor manufacturing companies, as they could increase the yield losses to hundreds of millions of dollars. Fortunately, these wafer defects leave unique patterns due to their spatial dependence across wafer maps. It is thus possible to identify and predict them in order to find the point of failure in the manufacturing process accurately. This paper introduces a novel simplified subspaced regression framework for the accurate and efficient identification of defect patterns in semiconductor wafer maps. It can achieve a test error comparable to or better than the state-of-the-art machine-learning (ML)-based methods, while maintaining a low computational cost when dealing with large-scale wafer data. The effectiveness and utility of the proposed approach has been demonstrated by our experiments on real wafer defect datasets, achieving detection accuracy of 99.884% and R2 of 99.905%, which are far better than those of any existing methods reported in the literature.
Keywords :
learning (artificial intelligence); manufacturing processes; production engineering computing; regression analysis; semiconductor industry; semiconductor technology; ML-based method; defect pattern identification; defective chips; machine-learning-based method; manufacturing process; semiconductor manufacturing companies; semiconductor wafer maps; simplified subspaced regression network; wafer defects; Accuracy; Classification algorithms; Computational modeling; Data models; Predictive models; Semiconductor device modeling; Support vector machines; Ensemble learning; ensemble learning; machine learning; machine learning (ML); semi-parametric models; semiconductor wafer defect detection; semiparametric models;
Journal_Title :
Industrial Informatics, IEEE Transactions on
DOI :
10.1109/TII.2015.2481719