Manufacturing intelligence for determining machine subgroups to enhance yield in semiconductor manufacturning
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[1] Douglas C. Montgomery,et al. Statistical quality control : a modern introduction , 2009 .
[2] Chen-Fu Chien,et al. Manufacturing intelligence for semiconductor demand forecast based on technology diffusion and product life cycle , 2010 .
[3] Daniel R. Lewin,et al. Nonlinear modeling and multivariable control of photolithography , 2002 .
[4] An-Chen Lee,et al. Advanced Process Control of the Critical Dimension in Photolithography , 2008 .
[5] B. Grosman,et al. Yield enhancement in photolithography through model-based process control: average mode control , 2005, IEEE Transactions on Semiconductor Manufacturing.
[6] Chen-Fu Chien,et al. Manufacturing Intelligence to Exploit the Value of Production and Tool Data to Reduce Cycle Time , 2011, IEEE Transactions on Automation Science and Engineering.
[7] Chadi El Chemali,et al. Critical dimension control of a plasma etch process by integrating feedforward and feedback run-to-run control , 2003 .
[8] Chen-Fu Chien,et al. A novel method for determining machine subgroups and backups with an empirical study for semiconductor manufacturing , 2006, J. Intell. Manuf..
[9] Merritt Funk,et al. Addressing Dynamic Process Changes in High Volume Plasma Etch Manufacturing by Using Multivariate Process Control , 2010, IEEE Transactions on Semiconductor Manufacturing.
[10] Costas J. Spanos,et al. One step forward from run-to-run critical dimension control: Across-wafer level critical dimension control through lithography and etch process , 2008 .
[11] D.A. Williams,et al. Improvements in polysilicon etch bias and transistor gate control with module level APC methodologies , 2005, IEEE Transactions on Semiconductor Manufacturing.
[12] L. J. Savage,et al. The Foundations of Statistics , 1955 .