A Study on Wafer to Wafer Malfunction Detection using End Point Detection(EPD) Signal

EPD 신호궤적을 이용한 개별 웨이퍼간 이상검출에 관한 연구

  • 이석주 (연세대학교 전기공학과) ;
  • 차상엽 (연세대학교 전기공학과) ;
  • 최순혁 (LG 전자㈜ 미디어통신 연구소) ;
  • 고택범 (LG 하니웰㈜ 연구소) ;
  • 우광방 (연세대학교 전기공학과)
  • Published : 1998.08.01

Abstract

In this paper, an algorithm is proposed to detect the malfunction of plasma-etching characteristics using EPD signal trajectories. EPD signal trajectories offer many information on plasma-etching process state, so they must be considered as the most important data sets to predict the wafer states in plasma-etching process. A recent work has shown that EPD signal trajectories were successfully incorporated into process modeling through critical parameter extraction, but this method consumes much effort and time. So Principal component analysis(PCA) can be applied. PCA is the linear transformation algorithm which converts correlated high-dimensional data sets to uncorrelated low-dimensional data sets. Based on this reason neural network model can improve its performance and convergence speed when it uses the features which are extracted from raw EPD signals by PCA. Wafer-state variables, Critical Dimension(CD) and uniformity can be estimated by simulation using neural network model into which EPD signals are incorporated. After CD and uniformity values are predicted, proposed algorithm determines whether malfunction values are produced or not. If malfunction values arise, the etching process is stopped immediately. As a result, through simulation, we can keep the abnormal state of etching process from propagating into the next run. All the procedures of this algorithm can be performed on-line, i.e. wafer to wafer.

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