DocumentCode
8855
Title
Parametric Modeling of Microwave Passive Components Using Sensitivity-Analysis-Based Adjoint Neural-Network Technique
Author
Sadrossadat, S.A. ; Yazi Cao ; Qi-Jun Zhang
Author_Institution
Dept. of Electron., Carleton Univ., Ottawa, ON, Canada
Volume
61
Issue
5
fYear
2013
fDate
May-13
Firstpage
1733
Lastpage
1747
Abstract
This paper presents a novel sensitivity-analysis-based adjoint neural-network (SAANN) technique to develop parametric models of microwave passive components. This technique allows robust parametric model development by learning not only the input-output behavior of the modeling problem, but also derivatives obtained from electromagnetic (EM) sensitivity analysis. A novel derivation is introduced to allow complicated high-order derivatives to be computed by a simple artificial neural-network (ANN) forward-back propagation procedure. New formulations are deduced for exact second-order sensitivity analysis of general multilayer neural-network structures with any numbers of layers and hidden neurons. Compared to our previous work on adjoint neural networks, the proposed SAANN is easier to implement into an existing ANN structure. The proposed technique allows us to obtain accurate and parametric models with less training data. Another benefit of this technique is that the trained model can accurately predict derivatives to geometrical or material parameters, regardless of whether or not these parameters are accommodated as sensitivity variables in EM simulators. Once trained, the SAANN models provide accurate and fast prediction of EM responses and derivatives used for high-level optimization with geometrical or material parameters as design variables. Three examples including parametric modeling of coupled-line filters, cavity filters, and junctions are presented to demonstrate the validity of this technique.
Keywords
backpropagation; electronic engineering computing; microwave circuits; neural nets; optimisation; passive networks; sensitivity analysis; ANN forward-back propagation procedure; ANN structure; EM responses; EM sensitivity analysis; EM simulators; SAANN models; SAANN technique; adjoint neural networks; artificial neural-network forward-back propagation procedure; cavity filters; coupled-line filters; design variables; electromagnetic sensitivity analysis; general multilayer neural-network structures; geometrical parameters; hidden neurons; high-level optimization; high-order derivatives; input-output behavior; junctions; material parameters; microwave passive components; modeling problem; parametric modeling; parametric models; robust parametric model development; second-order sensitivity analysis; sensitivity variables; sensitivity-analysis-based adjoint neural-network technique; training data; Modeling; neural networks; parametric modeling; passive components; sensitivity analysis;
fLanguage
English
Journal_Title
Microwave Theory and Techniques, IEEE Transactions on
Publisher
ieee
ISSN
0018-9480
Type
jour
DOI
10.1109/TMTT.2013.2253793
Filename
6494354
Link To Document