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신경회로망을 이용한 PECVD 산화막의 특성 모형화

Modeling of PECVD Oxide Film Properties Using Neural Networks

  • 이은진 (가톨릭대학교 정보통신전자공학부) ;
  • 김태선 (가톨릭대학교 정보통신전자공학부)
  • Lee, Eun-Jin (School of Information, Communications and Electronics Engineering, Catholic University) ;
  • Kim, Tae-Seon (School of Information, Communications and Electronics Engineering, Catholic University)
  • 투고 : 2010.08.23
  • 심사 : 2010.10.15
  • 발행 : 2010.11.01

초록

In this paper, Plasma Enhanced Chemical Vapor Deposition (PECVD) $SiO_2$ film properties are modeled using statistical analysis and neural networks. For systemic analysis, Box-Behnken's 3 factor design of experiments (DOE) with response surface method are used. For characterization, deposited film thickness and film stress are considered as film properties and three process input factors including plasma RF power, flow rate of $N_2O$ gas, and flow rate of 5% $SiH_4$ gas contained at $N_2$ gas are considered for modeling. For film thickness characterization, regression based model showed only 0.71% of root mean squared (RMS) error. Also, for film stress model case, both regression model and neural prediction model showed acceptable RMS error. For sensitivity analysis, compare to conventional fixed mid point based analysis, proposed sensitivity analysis for entire range of interest support more process information to optimize process recipes to satisfy specific film characteristic requirements.

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참고문헌

  1. S. Cho, Y. Kim, Y. Seo, Y. Im, and D. Yoon, J. Kor. Ceram.. Soc. 38 1037 (2001).
  2. S. Kim, H. Kim, and K. Lim, Theory and App. Chem. Eng. 8, 5094 (2002).
  3. S. Song, Y. Park, and D. Park, Theory and App. Chem. Eng. 9, 2690 (2003).
  4. S. Han, M. Ceiler, A. Bidstrup, P. Kohl, and G. May, Trans. IEEE CPMT-Part A 17, 174 (1994).
  5. S. Hong, J. Park, and S. Han, J. KIEEME 6, 262 (2005).