DocumentCode
3630517
Title
Analysis and Synthesis of the Microstrip Lines Based on Support Vector Regression
Author
Nurhan Turker Tokan;Filiz Gunes
Author_Institution
Electronic and Communication Engineering Department, Y?ld?z Technical University, Be?ikta?, Istanbul/TURKEY, nturker@yildiz.edu.tr
fYear
2008
Firstpage
446
Lastpage
449
Abstract
In this work, the support vector regression is adopted to the analysis and synthesis of microstrip lines on all isotropic/anisotropic dielectric materials, which is a novel technique based on the rigorous mathematical fundamentals and the most competitive technique to the popular artificial neural networks. In this design process, accuracy, computational efficiency and number of support vectors are investigated in detail and the support vector regression performance is compared to an artificial neural network performance. It can be concluded that the artificial neural network may be replaced by the support vector machines in the regression applications due to its high approximation capability and much faster convergence rate with the sparse solution technique. Synthesis is achieved by utilizing the analysis black-box bidirectionally by reverse training. Furthermore, by using the adaptive step size, a much faster convergence rate is obtained in the reverse training. Besides, design of microstrip lines on the most commonly used isotropic/anisotropic dielectric materials are given as the worked examples.
Keywords
"Microstrip","Artificial neural networks","Network synthesis","Anisotropic magnetoresistance","Support vector machines","Algorithm design and analysis","Transmission line theory","Dielectric substrates","Frequency","Integrated circuit synthesis"
Publisher
ieee
Conference_Titel
Microwave Integrated Circuit Conference, 2008. EuMIC 2008. European
Print_ISBN
978-2-87487-007-1
Type
conf
DOI
10.1109/EMICC.2008.4772325
Filename
4772325
Link To Document