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Journal ArticleDOI

A New Training Approach for Parametric Modeling of Microwave Passive Components Using Combined Neural Networks and Transfer Functions

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TLDR
In this paper, a neural network is trained to map geometrical variables onto coefficients of transfer functions, and the gaps between orders are bridged by a new order-changing module, which guarantees the continuity of coefficients and simultaneously maintains the modeling accuracy.
Abstract
This paper presents a novel technique to develop combined neural network and transfer function models for parametric modeling of passive components. In this technique, the neural network is trained to map geometrical variables onto coefficients of transfer functions. A major advance is achieved in resolving the discontinuity problem of numerical solutions of the coefficients with respect to the geometrical variables. Minimum orders of transfer functions for different regions of geometrical parameter space are identified. Our investigations show that varied orders used for different regions result in the discontinuity of coefficients. The gaps between orders are bridged by a new order-changing module, which guarantees the continuity of coefficients and simultaneously maintains the modeling accuracy through a neural network optimization process. This technique is also expanded to include bilinear transfer functions. Once trained, the model provides accurate and fast prediction of the electromagnetic behavior of passive components with geometrical parameters as variables. Compared to conventional training methods, the proposed method allows better accuracy in challenging applications involving high-order transfer functions, wide frequency range, and large geometrical variations. Three examples including parametric modeling of slotted patch antennas, bandstop microstrip filters, and bandpass coupled-line filters are examined to demonstrate the validity of this technique.

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Citations
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Journal ArticleDOI

Parametric Modeling of EM Behavior of Microwave Components Using Combined Neural Networks and Pole-Residue-Based Transfer Functions

TL;DR: An advanced technique to develop combined neural network and pole-residue-based transfer function models for parametric modeling of electromagnetic (EM) behavior of microwave components and can obtain better accuracy in challenging applications involving high dimension of geometric parameter space and large geometrical variations, compared with conventional modeling methods.
Proceedings Article

Circuit-GNN: Graph Neural Networks for Distributed Circuit Design

TL;DR: The Circuit-GNN model is presented, a graph neural network (GNN) model for designing distributed circuits that learns to simulate the electromagnetic properties of distributed circuits and comes up with new designs that differ from the limited templates commonly used by engineers in the field, hence significantly expanding the design space.
Journal ArticleDOI

Multiparameter Modeling With ANN for Antenna Design

TL;DR: A novel artificial neural network model is proposed to describe the antenna performance with various parameters and can simultaneously obtain S-parameter, gain, and radiation pattern from the independent branches.
Journal ArticleDOI

Parametric Modeling of Microwave Passive Components Using Sensitivity-Analysis-Based Adjoint Neural-Network Technique

TL;DR: A novel sensitivity-analysis-based adjoint neural-network (SAANN) technique to develop parametric models of microwave passive components and can accurately predict derivatives to geometrical or material parameters, regardless of whether or not these parameters are accommodated as sensitivity variables in EM simulators.
Journal ArticleDOI

Parametric Modeling of Microwave Components Using Adjoint Neural Networks and Pole-Residue Transfer Functions With EM Sensitivity Analysis

TL;DR: A pole-residue-based adjoint neuro-transfer function (neuro-TF) technique with electromagnetic (EM) sensitivity analysis for parametric modeling of EM behavior of microwave components with respect to changes in geometrical parameters to increase model accuracy and speed up model development by reducing the number of training data required.
References
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Journal ArticleDOI

Rational approximation of frequency domain responses by vector fitting

TL;DR: The paper describes a general methodology for the fitting of measured or calculated frequency domain responses with rational function approximations by replacing a set of starting poles with an improved set of poles via a scaling procedure.
Book

Neural Networks for RF and Microwave Design

Qi-Jun Zhang, +1 more
TL;DR: This paper presents a meta-modelling framework for knowledge-based ANN models for design and training of Neural Networks for RF/Microwave Components and Circuit Analysis and Optimization.
Journal ArticleDOI

Artificial neural networks for RF and microwave design - from theory to practice

TL;DR: Fundamental concepts in this emerging area of neural-network computational modules are described at teaching RF/microwave engineers what neural networks are, why they are useful, when they can be used, and how to use them.
Journal ArticleDOI

Capabilities of a four-layered feedforward neural network: four layers versus three

TL;DR: A proof is given showing that a three-layered feedforward network with N-1 hidden units can give any N input-target relations exactly, and a four-layering network is constructed and is found to give anyN input- target relations with a negligibly small error using only (N/2)+3 hidden units.
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