Daily Arxiv

This page organizes papers related to artificial intelligence published around the world.
This page is summarized using Google Gemini and is operated on a non-profit basis.
The copyright of the paper belongs to the author and the relevant institution. When sharing, simply cite the source.

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

Takeaways:
Enables robust, accurate, and generalizable reverse engineering of complex microwave filters.
It can support rapid prototyping of advanced filter designs by minimizing simulation costs.
Expandability to other high-frequency components in microwave and millimeter-wave technologies.
Limitations:
Specific Limitations is not included in the abstract of the paper.
👍