DocumentCode
2442282
Title
A neural-network-based local inverse mapping technique for building statistical DMOS models
Author
Frère, S.F. ; Desoete, B. ; Rhayem, J. ; Anser, M. ; Walton, A.J.
Author_Institution
AMI Semicond., Oudenaarde, Belgium
fYear
2003
fDate
16-18 Sept. 2003
Firstpage
331
Lastpage
334
Abstract
This paper presents a methodology to circumvent the time consuming standard approach for statistical model development. The methodology is a two step process. The first part defines the relationship between electrical device parameters and model device parameters by means of training a neural network. The second stage uses the neural network to create worst-case model parameter sets. In order to select an appropriate set of worst-case electrical parameters, a multivariate statistical analysis is performed, such that correlations between device parameters are taken into account. The neural network approach also enables a Monte-Carlo model to be generated. The advantages of the proposed methodology are its speed improvement and accuracy.
Keywords
MOSFET; Monte Carlo methods; correlation methods; inverse problems; neural nets; semiconductor device models; statistical analysis; Monte-Carlo model; device parameter correlations; local inverse mapping technique; multivariate statistical analysis; neural network training; statistical DMOS models; worst-case model parameter sets; Ambient intelligence; Databases; Electric variables measurement; MOSFETs; Microelectronics; Neural networks; Performance analysis; Space technology; Standards development; Threshold voltage;
fLanguage
English
Publisher
ieee
Conference_Titel
European Solid-State Device Research, 2003. ESSDERC '03. 33rd Conference on
Conference_Location
Estoril, Portugal
Print_ISBN
0-7803-7999-3
Type
conf
DOI
10.1109/ESSDERC.2003.1256881
Filename
1256881
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