Unsupervised spatial pattern classification of electrical-wafer-sorting maps in semiconductor manufacturing

Pattern Recognition Letters(2005)

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摘要
In semiconductor manufacturing, the spatial pattern of failed devices in a wafer can give precious hints on which step of the process is responsible for the failures. In the literature, Kohonen's Self Organizing Feature Maps (SOM) and Adaptive Resonance Theory 1 (ART1) architectures have been compared, concluding that the latter are to be preferred. However, both the simulated and the real data sets used for validation and comparison were very limited. In this paper, the use of ART1 and SOM as wafer classifiers is re-assessed on much more extensive simulated and real data sets. We conclude that ART1 is not adequate, whereas SOM provide completely satisfactory results including visually effective representation of spatial failure probability of the pattern classes.
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关键词
electrical-wafer-sorting map,self organizing feature maps,failed device,effective representation,unsupervised spatial pattern classification,semiconductor manufacturing,wafer maps,spatial failure probability,spatial pattern,adaptive resonance theory,pattern class,wafer classifier
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