Title :
EWMA/SD: an end-of-line SPC scheme to monitor sequence-disordered data [semiconductor manufacturing]
Author :
Fan, Chih-Min ; Guo, Ruey-Shan ; Chang, Shi-Chung
Author_Institution :
Dept. of Electr. Eng., Nat. Taiwan Univ., Taipei, Taiwan
Abstract :
In this paper, we focus on the design issues of applying an SPC control chart to end-of-line wafer acceptance test (WAT) data. Since the sequence of end-of-line data is not the same as the sequence in each process step, an abnormal trend in any of the process steps is more difficult to detect based on the end-of-line data than based on single process data (if available). To overcome this deficiency, we propose an exponentially weighted moving average method for sequence-disordered data (EWMA/SD). The basic idea is that the moving average can smooth out the sequence-disordered effect and weighting factors allow us to choose an effective window size so that the underlying trend can be seen. It is different from the traditional EWMA method as it has the capability of handling sequence-disordered data. An end-of-line trend detection system has been developed for validation of the method, which consists of three modules: a run length distribution generator, an optimal parameter generator, and an EWMA/SD control chart. Based on process characteristics, the corresponding run lengths of an EWMA/SD control chart for different parameter vectors are derived by the Markov chain approach. The optimal parameter vector is chosen as the one which meets the requirement for maximum false alarm rate and maximizes the detection speed at the same time. Results of simulation and field data validation show that EWMA/SD is able to smooth out the sequence-disordered data, be sensitive to process changes, and be robust to background noise
Keywords :
Markov processes; integrated circuit manufacture; monitoring; moving average processes; semiconductor device manufacture; statistical process control; EWMA/SD control chart; Markov chain; SPC control chart; end-of-line SPC scheme; end-of-line trend detection system; exponentially weighted moving average method; optimal parameter generator; run length distribution generator; semiconductor manufacturing; sequence-disordered data monitoring; wafer acceptance test data; Control charts; Electric variables measurement; Industrial control; Monitoring; Noise robustness; Process control; Random sequences; Semiconductor device noise; Testing; Thickness measurement;
Conference_Titel :
Statistical Metrology, 1997 2nd International Workshop on
Conference_Location :
Kyoto
Print_ISBN :
0-7803-3737-9
DOI :
10.1109/IWSTM.1997.629415