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AI-Powered Inverse Design of Ku-Band SIW Resonant Structures by Iterative Residual Correction Network
Created by
Haebom
Author
Mohammad Mashayekhi, Kamran Salehian, Abbas Ozgoli, Saeed Abdollahi, Abdolali Abdipour, Ahmed A. Kishk
Outline
This study developed and validated a deep learning-based framework for reverse engineering high-performance substrate-integrated waveguide (SIW) filters with both near-field and wideband resonances. A three-stage deep learning framework was implemented, consisting of a Feedforward Inverse Model (FIM), a Hybrid Inverse-Forward Residual Refinement Network (HiFR2-Net), and an Iterative Residual Correction Network (IRC-Net). The IRC-Net outperformed the other models. Experimental results showed improved accuracy and convergence through error reduction.
Takeaways, Limitations
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Takeaways:
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Enables robust, accurate, and generalizable reverse engineering of complex microwave filters.
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It can support rapid prototyping of advanced filter designs by minimizing simulation costs.
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Expandability to other high-frequency components in microwave and millimeter-wave technologies.
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Limitations:
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Specific Limitations is not included in the abstract of the paper.