Authors
Shing Chiang Tan, Junzo Watada, Zuwairie Ibrahim, Marzuki Khalid
Publication date
2014/7/1
Journal
IEEE transactions on neural networks and learning systems
Volume
26
Issue
5
Pages
933-950
Publisher
IEEE
Description
Wafer defect detection using an intelligent system is an approach of quality improvement in semiconductor manufacturing that aims to enhance its process stability, increase production capacity, and improve yields. Occasionally, only few records that indicate defective units are available and they are classified as a minority group in a large database. Such a situation leads to an imbalanced data set problem, wherein it engenders a great challenge to deal with by applying machine-learning techniques for obtaining effective solution. In addition, the database may comprise overlapping samples of different classes. This paper introduces two models of evolutionary fuzzy ARTMAP (FAM) neural networks to deal with the imbalanced data set problems in a semiconductor manufacturing operations. In particular, both the FAM models and hybrid genetic algorithms are integrated in the proposed evolutionary artificial neural …
Total citations
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Scholar articles
SC Tan, J Watada, Z Ibrahim, M Khalid - IEEE transactions on neural networks and learning …, 2014