DocumentCode
966940
Title
A Wideband and Scalable Model of Spiral Inductors Using Space-Mapping Neural Network
Author
Cao, Yazi ; Wang, Gaofeng
Author_Institution
Wuhan Univ., Wuhan
Volume
55
Issue
12
fYear
2007
Firstpage
2473
Lastpage
2480
Abstract
A wideband and scalable model of RF CMOS spiral inductors by virtue of a novel space-mapping neural network (SMNN) is presented. A new modified 2-pi equivalent circuit is used for constructing the SMNN model. This new modeling approach also exploits merits of space-mapping technology. This SMNN model has much enhanced learning and generalization capabilities. In comparison with the conventional neural network and the original 2-pi model, this new SMNN model can map the input-output relationships with fewer hidden neurons and have higher reliability for generalization. As a consequence, this SMNN model can run as fast as an approximate equivalent circuit, yet preserve the accuracy of detailed electromagnetic simulations. Experiments are included to demonstrate merits and efficiency of this new approach.
Keywords
electrical engineering computing; inductors; neural nets; RF CMOS; scalable model; space-mapping neural network; spiral inductors; wideband model; CMOS technology; Equivalent circuits; Inductors; Neural networks; Neurons; Radio frequency; Semiconductor device modeling; Space technology; Spirals; Wideband; Modeling; neural networks; space mapping; spiral inductor;
fLanguage
English
Journal_Title
Microwave Theory and Techniques, IEEE Transactions on
Publisher
ieee
ISSN
0018-9480
Type
jour
DOI
10.1109/TMTT.2007.909602
Filename
4378294
Link To Document