Title :
Extraction of wafer-level defect density distributions to improve yield prediction
Author :
Hess, Christopher ; Weiland, Larg H.
Author_Institution :
PDF Solutions Inc., San Jose, CA, USA
fDate :
5/1/1999 12:00:00 AM
Abstract :
Defect density distributions play an important role in process control and yield prediction. To improve yield prediction we present a methodology to extract wafer-level defect density distributions better reflecting such chip-to-chip defect density variations that occur in reality. For that, imaginary wafermaps are generated for a variety of different chip areas to calculate a yield-to-area dependency. Based on these calculations a micro density distribution (MDD) will be determined for each wafer that reflects the degree of defect clustering. The single MDD´s per wafer may be summarized to also provide a total defect density distribution per lot or any other sample size. Furthermore, the area needed for defect inspection may be reduced to just a fraction of each wafer which reduces time and costs of data collection and analysis
Keywords :
inspection; integrated circuit yield; checkerboard test structure; data collection; defect clustering; inspection; integrated circuit manufacturing; micro density distribution; parameter extraction; process control; wafer-level defect density distribution; yield prediction; Circuit testing; Costs; Data analysis; Electric variables measurement; Helium; Inspection; Integrated circuit yield; Optical filters; Process control; Semiconductor device measurement;
Journal_Title :
Semiconductor Manufacturing, IEEE Transactions on