Detection and Prediction of Chipping in Wafer Grinding Based on Dicing Signal

Author:

Chang Bao RongORCID,Tsai Hsiu-Fen,Mo Hsiang-Yu

Abstract

Simple regression cannot wholly analyze large-scale wafer backside wall chipping because the wafer grinding process encounters many problems, such as collected data missing, data showing a non-linear distribution, and correlated hidden parameters lost. The objective of this study is to propose a novel approach to solving this problem. First, this study uses time series, random forest, importance analysis, and correlation analysis to analyze the signals of wafer grinding to screen out key grinding parameters. Then, we use PCA and Barnes-Hut t-SNE to reduce the dimensionality of the key grinding parameters and compare their corresponding heat maps to find out which dimensionality reduction method is more sensitive to the chipping phenomenon. Finally, this study imported the more sensitive dimensionality reduction data into the Data Driven-Bidirectional LSTM (DD-BLSTM) model for training and predicting the wafer chipping. It can adjust the key grinding parameters in time to reduce the occurrence of large-scale wafer chipping and can effectively improve the degree of deterioration of the grinding blade. As a result, the blades can initially grind three pieces of the wafers without replacement and successfully expand to more than eight pieces of the wafer. The accuracy of wafer chipping prediction using DD-BLSTM with Barnes-Hut t-SNE dimensionality reduction can achieve 93.14%.

Funder

Ministry of Science and Technology, Taiwan

Publisher

MDPI AG

Subject

General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)

Reference32 articles.

1. Rosa-Zurera, M., Jarabo-Amores, P., Lopez-Ferreras, F., and Sanz-Gonzalez, J.L. (2005, January 17–20). Comparative analysis of importance sampling techniques to estimate error functions for training neural networks. Proceedings of the IEEE/SP 13th Workshop on Statistical Signal Processing, Bordeaux, France.

2. Onda, H. (2011, January 5–6). Framework for wafer level control APC model. Proceedings of the 2011 e-Manufacturing & Design Collaboration Symposium & International Symposium on Semiconductor Manufacturing (eMDC & ISSM), Hsinchu, Taiwan. Available online: http://resolver.scholarsportal.info/resolve/1523553x/v2011inone/1_ffwlcam.xml.

3. Khokhar, M.S., Cheng, K., Ayoub, M., and Eric, L.K. (2019, January 16–17). Multi-Dimension Projection for Non-Linear Data Via Spearman Correlation Analysis (MD-SCA). Proceedings of the 2019 8th International Conference on Information and Communication Technologies (ICICT), Karachi, Pakistan.

4. Dong, Y.-Q. (2010, January 17–19). Value Ranges of Spearman’s Rho and Kendall’s Tau of a Class of Copulas. Proceedings of the 2010 International Conference on Computational and Information Sciences, Chengdu, China.

5. Zhang, Z., and Yang, X. (2010, January 23–24). Constructing Copulas on the Parabolic Boundary of Kendall’s Tau-Spearman’s Rho Region. Proceedings of the 2010 First ACIS International Symposium on Cryptography, and Network Security, Data Mining and Knowledge Discovery, E-Commerce and Its Applications, and Embedded Systems, Qinhuangdao, China.

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