Abstract
Abstract
Designing high-performance electromagnetic functional materials and artificial structures is of great significance for electromagnetic wave modulation applications. Optimizing performance in the high-dimensional parameter space of electromagnetic functional materials has posed a challenging problem. This paper proposes the use of reinforcement and transfer learning methods to facilitate the quick and accurate design of wideband circuit analog absorbers (CAA). A trained reinforcement learning network is utilized to comprehend the relationship between reflectivity performance and changes in impedance parameter. Furthermore, the transfer learning method is applied to accelerate the training process, leading in a 20-fold reduction in the number of simulations. To validate the effectiveness of this approach, a double-layer absorber aiming for reflectivity less than −20 dB at 3–10 GHz is designed, requiring only 50 simulations. This demonstrates that the proposed method provides a flexible strategy for the interactive design of equivalent circuit and electromagnetic structural parameters. Moreover, it presents a novel and efficient solution for microwave absorber design, with potential applications across various microwave design fields.
Funder
National Natural Science Foundation of China
Postdoctoral Fellowship Program of CPSF
Reference33 articles.
1. Efficient analysis of frequency-selective surfaces by a simple equivalent-circuit model;Costa;IEEE Antennas Propag. Mag.,2012
2. An efficient method based on equivalent-circuit modeling for analysis of frequency selective surfaces;Silva,2013
3. A fast and efficient method for design of circuit analog absorbers consisting of resistive square loop arrays;Che,2015
4. An equivalent circuit model of FSS-based metamaterial absorber using coupled line theory;Ghosh;IEEE Antennas Wirel. Propag. Lett.,2015