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Data transformation in SPC for semiconductor machinery control: A case of monitoring particles
Authors:M-C Chen  C-T Su  C-C Hsu  Y-W Liu
Affiliation:1. Department of Business Management , National Taipei University of Technology , No. 1, Section 3, Chung-Hsiao E. Road, Taipei 106, Taiwan ROC;2. Department of Industrial Engineering and Engineering Management , National Tsing Hua University , Hsinchu, Taiwan;3. Department of Industrial Engineering and Management , National Chiao Tung University , Hsinchu, Taiwan
Abstract:Yield is an important indicator of productivity in semiconductor manufacturing. In the complex manufacturing process, the particles on wafers inevitably cause defects, which may result in chip failure and thus reduce yield. Semiconductor manufacturers initially use wafer testing to control the machine for the number of particles. This machinery control procedure aims to detect any unusual condition of machines, reduce defects in actual wafer production and thus improve yield. In practice, the distribution of particles does not usually follow a Poisson distribution, which causes an overly high rate of false alarms in applying the c-chart. Consequently, the semiconductor machinery cannot be appropriately controlled by the number of particles on machines. This paper primarily combines data transformation with the control chart based on a Neyman type-A distribution to develop a machinery control procedure applicable to semiconductor machinery. The proposed approach monitors the number of particles on the testing wafer of machines. A semiconductor company in Taiwan in the Hsinchu Science Based Industrial Park demonstrated the feasibility of the proposed method through the implementation of several machines. The implementation results indicated that the occurrence of false alarms declined extensively from 20% to 4%.
Keywords:Machinery control  Semiconductor manufacturing  Control chart  Particle counts
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