Title :
Semiconductor yield loss´ causes identification: A data mining approach
Author :
Barkia ; Boucher, X. ; Le Riche, R. ; Beaune, P. ; Girard, M.A. ; Rozier, D.
Author_Institution :
PIESO Dept., Ecole Nat. Super. des Mines de St.-Etienne, St. Etienne, France
Abstract :
Semiconductor manufacturing processes are known to be long and complex. Starting from a silicon wafer, multiple treatments are applied for about three months. Mastering the manufacturing process as well as a rapid identification of yield loss´ causes are the keys to a successful semiconductor fabrication plant. The production cycle is composed of a combination of production and quality inspection steps. Data collected at production and quality control steps, lead to huge heterogeneous databases. In order to understand yield loss causes, we propose a KDD (Knowledge Discovery from Databases) approach, which explores the knowledge hidden in these multiple databases, by identifying, first, clusters in the different databases and, second, relational patterns between them. These relational patterns represent potential yield loss´ causes.
Keywords :
data mining; industrial plants; inspection; manufacturing processes; production control; production engineering computing; quality control; semiconductor industry; data mining approach; heterogeneous databases; knowledge discovery from databases; production control; quality control; quality inspection; relational patterns; semiconductor fabrication plant; semiconductor manufacturing processes; semiconductor yield loss causes identification; yield loss; Association rules; Databases; Manufacturing processes; Quality control; Clustering; Knowledge Discovery from Databases (KDD); Semiconductor manufacturing; data mining; yield enhancement; yield loss causes;
Conference_Titel :
Industrial Engineering and Engineering Management (IEEM), 2013 IEEE International Conference on
Conference_Location :
Bangkok
DOI :
10.1109/IEEM.2013.6962530