Title of article :
Neural network modeling of reactive ion etching using optical emission spectroscopy data
Author/Authors :
Hong، Sang Jeen نويسنده , , G.S.، May, نويسنده , , Park، Dong-Cheol نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2003
Pages :
-597
From page :
598
To page :
0
Abstract :
Neural networks are employed to model reactive ion etching (RIE) using optical emission spectroscopy (OES) data. While OES is an excellent tool for monitoring plasma emission intensity, a primary issue with its use is the large dimensionality of the spectroscopic data. To alleviate this concern, principal component analysis (PCA) and autoencoder neural networks (AENNs) are implemented as mechanisms for feature extraction to reduce the dimensionality of the OES data. OES data are generated from a 2/sup 4/ factorial experiment designed to characterize RIE process variation during the etching of benzocyclobutene (BCB) in a SF/sub 6//O/sub 2/ plasma, with controllable input factors consisting of the two gas flows, RF power, and chamber pressure. The OES data, consisting of 226 wavelengths sampled every 20 s, are compressed into five principal components using PCA and seven features using AENNs. Each method is subsequently used to establish multilayer perceptron neural networks trained using error back-propagation to model etch rate, uniformity, selectivity, and anisotropy. The neural network models of the etch responses using both methods show excellent agreement, with root-mean-squared errors as low as 0.215% between model predictions and measured data.
Keywords :
testis , Gene regulation , male reproductive tract , spermatid , spermatogenesis
Journal title :
IEEE Transactions on Semiconductor Manufacturing
Serial Year :
2003
Journal title :
IEEE Transactions on Semiconductor Manufacturing
Record number :
95535
Link To Document :
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