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International Journal

Similarity Search on Wafer Bin Map Through Nonparametric and Hierarchical Clustering
categorize
Machine Learning
Author
Lee, J. H., Moon, I. C., & Oh, R.
Year
2021
Month
Nov
Journal Name
IEEE Transactions on Semiconductor Manufacturing
Volume
34
Issue
4
Page
464-474
File
Similarity_Search_on_Wafer_Bin_Map_through_Nonparametric_and_Hierarchical_Clustering.pdf (1.7M) 20회 다운로드 DATE : 2023-11-09 22:22:46

Lee, J. H., Moon, I. C., & Oh, R. (2021). Similarity Search on Wafer Bin Map Through Nonparametric and Hierarchical ClusteringIEEE Transactions on Semiconductor Manufacturing34(4), 464–474 


Abstract

Searching for and comparing similar wafer maps can provide crucial information for root cause analysis in the manufacturing process of integrated circuits. Owing to the high dimensionality and complexity of defect patterns, comparison of similar maps in their entirety is inefficient. This paper proposes an automated similarity ranking system with a novel feature set as a reduced representation of wafer maps. To detect systematic failure patterns across wafer maps, we use nonparametric Bayesian clustering based on the Dirichlet process Gaussian mixture model, and hierarchical clustering based on the symmetric Kullback–Leibler divergence. The proposed features are efficient because they require minimal computation and storage; furthermore, they allow for highly discriminative rankings of similar failure patterns. Thus they are suitable for large-scale analysis of wafer maps. The proposed method is experimentally verified using a real wafer map dataset from a semiconductor manufacturing company, and a subset of WM-811K.


@article{lee-2021,
author = {Lee, Jea Hoon and Moon, Il‐Chul and Oh, Rosy},
journal = {IEEE Transactions on Semiconductor Manufacturing},
month = {11},
number = {4},
pages = {464--474},
title = {{Similarity Search on Wafer Bin Map through nonparametric and hierarchical clustering}},
volume = {34},
year = {2021},
doi = {10.1109/tsm.2021.3102679},
}

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