Efficient vlsi yield prediction with consideration of partial correlations

With the emergence of the deep submicron era, process variations have gained importance in issues related to chip design. The impact of process variations is measured using manufacturing/parametric yield. In order to get an accurate estimate of yield, the parameters considered need to be monitored a...

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Main Author: Varadan, Sridhar
Other Authors: Hu, Jiang
Format: Others
Language:en_US
Published: 2010
Subjects:
Online Access:http://hdl.handle.net/1969.1/ETD-TAMU-2503
http://hdl.handle.net/1969.1/ETD-TAMU-2503
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spelling ndltd-tamu.edu-oai-repository.tamu.edu-1969.1-ETD-TAMU-25032013-01-08T10:39:41ZEfficient vlsi yield prediction with consideration of partial correlationsVaradan, SridharYieldWith the emergence of the deep submicron era, process variations have gained importance in issues related to chip design. The impact of process variations is measured using manufacturing/parametric yield. In order to get an accurate estimate of yield, the parameters considered need to be monitored at a large number of locations. Nowadays, intra-die variations are an integral part of the overall process uctuations. This leads to the difficult case where yield prediction has to be done while considering independent and partially correlated variations. The presence of partial correlations adds to the existing trouble caused by the volume of variables. This thesis proposes two techniques for reducing the number of variables and hence the complexity of the yield computation problem namely - Principal Component Analysis (PCA) and Hierarchical Adaptive Quadrisection (HAQ). Systematic process variations are also included in our yield model. The biggest plus in these two methods is reducing the size of the yield prediction problem (thus making it less time complex) without affecting the accuracy in yield. The efficiency of these two approaches is measured by comparing with the results obtained from Monte Carlo simulations. Compared to previous work, the PCA based method can reduce the error in yield estimation from 17.1% - 21.1% to 1.3% - 2.8% with 4.6x speedup. The HAQ technique can reduce the error to 4.1% - 5.6% with 6x - 9.4x speedup.Hu, Jiang2010-01-15T00:06:29Z2010-01-16T00:37:21Z2010-01-15T00:06:29Z2010-01-16T00:37:21Z2007-122009-05-15BookThesisElectronic Thesistextelectronicapplication/pdfborn digitalhttp://hdl.handle.net/1969.1/ETD-TAMU-2503http://hdl.handle.net/1969.1/ETD-TAMU-2503en_US
collection NDLTD
language en_US
format Others
sources NDLTD
topic Yield
spellingShingle Yield
Varadan, Sridhar
Efficient vlsi yield prediction with consideration of partial correlations
description With the emergence of the deep submicron era, process variations have gained importance in issues related to chip design. The impact of process variations is measured using manufacturing/parametric yield. In order to get an accurate estimate of yield, the parameters considered need to be monitored at a large number of locations. Nowadays, intra-die variations are an integral part of the overall process uctuations. This leads to the difficult case where yield prediction has to be done while considering independent and partially correlated variations. The presence of partial correlations adds to the existing trouble caused by the volume of variables. This thesis proposes two techniques for reducing the number of variables and hence the complexity of the yield computation problem namely - Principal Component Analysis (PCA) and Hierarchical Adaptive Quadrisection (HAQ). Systematic process variations are also included in our yield model. The biggest plus in these two methods is reducing the size of the yield prediction problem (thus making it less time complex) without affecting the accuracy in yield. The efficiency of these two approaches is measured by comparing with the results obtained from Monte Carlo simulations. Compared to previous work, the PCA based method can reduce the error in yield estimation from 17.1% - 21.1% to 1.3% - 2.8% with 4.6x speedup. The HAQ technique can reduce the error to 4.1% - 5.6% with 6x - 9.4x speedup.
author2 Hu, Jiang
author_facet Hu, Jiang
Varadan, Sridhar
author Varadan, Sridhar
author_sort Varadan, Sridhar
title Efficient vlsi yield prediction with consideration of partial correlations
title_short Efficient vlsi yield prediction with consideration of partial correlations
title_full Efficient vlsi yield prediction with consideration of partial correlations
title_fullStr Efficient vlsi yield prediction with consideration of partial correlations
title_full_unstemmed Efficient vlsi yield prediction with consideration of partial correlations
title_sort efficient vlsi yield prediction with consideration of partial correlations
publishDate 2010
url http://hdl.handle.net/1969.1/ETD-TAMU-2503
http://hdl.handle.net/1969.1/ETD-TAMU-2503
work_keys_str_mv AT varadansridhar efficientvlsiyieldpredictionwithconsiderationofpartialcorrelations
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