Özet
Chemical mechanical planarization (CMP) process has been widely used in the semiconductor manufacturing industry for realizing highly finished (Ra ∼1 nm) and planar surfaces (WIWNU ∼ 1%, thickness standard deviation (SD) ∼ nm) of in-process wafer polishing. The CMP process is rather complex with nonlinear and non-Gaussian process dynamics, which brings significant challenges for process monitoring and control. As an attempt to address this issue, a method is presented in this paper that integrates nonlinear Bayesian analysis and statistical modeling to estimate and predict process state variables, and therewith to predict the performance measures, such as material removal rate (MRR), surface finish, surface defects, etc. As an example of performance measure, MRR is chosen to demonstrate the performance prediction. A sequential Monte Carlo (SMC) method, namely, particle filtering (PF) method is utilized for nonlinear Bayesian analysis to predict the CMP process-state and for tackling the process nonlinearity. Vibration signals from both wired and wireless vibration sensors are adopted in the experimental study conducted using the CMP apparatus. The process states captured by the sensor signals are related to MRR using design of experiments and statistical regression analysis. A case study was conducted using actual CMP processing data by comparing the PF method with other widely used prediction approaches. This comparison demonstrates the effectiveness of the proposed approach, especially for nonlinear dynamic processes.
Orijinal dil | İngilizce |
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Makale numarası | 5433049 |
Sayfa (başlangıç-bitiş) | 316-327 |
Sayfa sayısı | 12 |
Dergi | IEEE Transactions on Semiconductor Manufacturing |
Hacim | 23 |
Basın numarası | 2 |
DOI'lar | |
Yayın durumu | Yayınlandı - May 2010 |
Harici olarak yayınlandı | Evet |
Finansman
The authors would like to thank the National Science Foundation, Division of CMMI for its kind support of this work. R. Komanduri wishes to thank the A. H. Nelson, Jr. Chair for the additional financial support. Thanks are also due to Mrs. S. Green for excellent editorial support. Manuscript received June 26, 2008; revised October 23, 2009. First version published March 18, 2010; current version published May 05, 2010. This work was supported by the National Science Foundation under Grant CMMI-0700680 and Grant CMMI-0830023. The work of R. Komanduri was supported in part by the A. H. Nelson Jr. Endowed Chair.
Finansörler | Finansör numarası |
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Division of CMMI | |
National Science Foundation | CMMI-0830023, CMMI-0700680 |