研究目的
To develop an advanced technique for parametric modeling of electromagnetic (EM) behavior of microwave components using combined neural networks and pole-residue-based transfer functions, addressing the challenge of order variations as geometrical parameters change in a large region.
研究成果
The proposed method effectively addresses the challenge of order variations in pole-residue-based transfer functions for parametric modeling of EM behavior of microwave components. It provides a robust solution for high-dimensional geometrical parameter spaces and large geometrical variations, offering better accuracy than conventional methods. The technique is particularly effective for high-order problems and can be integrated into high-level circuit and system design.
研究不足
The technique requires careful handling of discontinuity issues in poles and residues with respect to geometrical parameters, especially in cases of large geometrical variations and high-order transfer functions.
1:Experimental Design and Method Selection:
The technique involves training neural networks to learn the relationship between pole/residues of transfer functions and geometrical parameters, with a focus on handling order variations. A pole-residue tracking technique is developed to manage order-changing problems.
2:Sample Selection and Data Sources:
EM data for different values of geometrical parameters are used, with frequency as an additional variable swept by the EM simulator during data generation.
3:List of Experimental Equipment and Materials:
CST Studio Suite 2014 software for full-wave EM simulation, Dell PowerEdge computers with Intel Xeon E5-2440 processors for parallel computation.
4:Experimental Procedures and Operational Workflow:
The process includes vector fitting for parameter extraction, pole-residue tracking for order-changing, preliminary training of neural networks, and refinement training of the overall model.
5:Data Analysis Methods:
The approach involves minimizing the error between model predictions and EM simulations by adjusting neural network internal weights.
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