A new publication from
Opto-Electronic Sciences;
DOI 10.29026/oes.2024.240014 , discusses how AI and physics unite for meta-antennas design.
Ka-band metasurface antennas, with their low-cost, low-profile design and superior beam-steering capabilities, show significant potential in the field of satellite communications. However, the constraints of limited satellite resources and significant atmospheric losses at Ka-band frequencies require these antennas to achieve wide-angle beam scanning capabilities and high antenna gain, adding considerable complexity to their design. In order to achieve the design of a multifunctional and highly efficient meta-antenna, the design optimization will involve numerous parameters, greatly increasing the use of computational resources and optimization time. Addressing the critical issue of balancing multiple optimization objectives, such as gain and scanning angle, while improving optimization speed, remains a key challenge in the design process.
To address these challenges of meta-antenna design, researchers from the University of Electronic Science and Technology of China, Tongji University, and City University of Hong Kong have joined forces in an extensive collaboration. Leveraging their long-term expertise in the field of meta-optics, they proposed a Ka-band meta-antenna design method based on a Physics-Assisted Particle Swarm Optimization (PA-PSO) algorithm. Using this method, they designed and fabricated a Ka-band meta-antenna.
The antenna proposed in the paper is designed using the PA-PSO algorithm. Compared to the traditional PSO algorithm, the optimization direction of particles in the PA-PSO algorithm is guided by extremum conditions derived from the variational method. This not only reduces computation time but also decreases the likelihood of finding suboptimal designs, as shown in Figs. 1c−1d. The final optimized results indicate that the relative strength achieved by the PA-PSO algorithm is 94.62806, which is comparable to the relative strength of 94.62786 achieved by the traditional PSO algorithm. However, the computational cost of the PA-PSO algorithm is significantly lower; it reaches the optimal state after only 650 iterations, whereas the traditional PSO algorithm requires 4100 iterations. This means the computation time of the PA-PSO algorithm is less than one-sixth of that for the PSO algorithm. Therefore, the PA-PSO method can guide particle swarms more efficiently, reducing computation time, making it an important tool for addressing complex multivariate and multi-objective optimization challenges.
The purple line shows the calculation errors. The four hexagons from bottom to top represent phase distributions at different stages: initial phase distribution, PSO algorithm iteration 650 times, PSO algorithm iteration 1500 times, and PSO algorithm iteration 4100 times (PA-PSO algorithm iteration 650 times). (b) Comparison of FOVs and F/D for planar lens antennas. The colors of the points indicate the fluctuation of gains when scanning within the field of view range.
Based on the phase distribution optimized by the PA-PSO algorithm, the team designed and fabricated a hexagonal meta-antenna sample with a focal length of 22 mm, diagonal length of 110 mm, and a thickness of only 1.524 mm. As shown in Figure 3, the antenna has an f-number of only 0.2, a beam scanning angle of ±55°, a maximum gain of 21.7 dBi, and a gain flatness of within 4 dB. This innovative hexagonal meta-antenna, with its wide scanning angle, compact design, and high transmission gain, exhibits enormous potential for applications in satellite communication, radar systems, 5G networks, and the Internet of Things, among many other fields.
Keywords: multiple-feed lens antennas / PA-PSO algorithm / metalens / metasurfaces / Ka-band antenna.
# # # # # #
Dr. Zhu Weiming received his PhD degree from ESIEE Paris East University, France, in 2011. Dr. Zhu Weiming has held various research positions throughout his career. He served as a senior research fellow at Nanyang Technological University (NTU), from 2011 to 2015. Subsequently, he worked as a research fellow at SIMTech, A*Star, Singapore, from 2015 to 2017. Currently, Dr. Zhu Weiming is a research professor at the University of Electronic Science and Technology of China. Dr. Zhu Weiming’s primary research interest lies in structural reconfigurable metamaterials based on MEMS (Micro-Electro-Mechanical Systems) and microfluidic systems. His work focuses on developing innovative materials and devices that can be dynamically adjusted for various applications. He has authored more than 30 journal papers and over 40 conference papers in internationally reputable journals, including Nature Communications, Advanced Materials, and Advanced Functional Materials. Additionally, he serves as a reviewer for journals such as Nature Communications, Science Advances, Light: Science and Applications, and Advanced Materials.
# # # # # #
Opto-Electronic Science (OES) is a peer-reviewed, open access, interdisciplinary and international journal published by The Institute of Optics and Electronics, Chinese Academy of Sciences as a sister journal of
Opto-Electronic Advances (OEA, IF=15.3). OES is dedicated to providing a professional platform to promote academic exchange and accelerate innovation. OES publishes articles, reviews, and letters of the fundamental breakthroughs in basic science of optics and optoelectronics.
# # # # # #
More information: https://www.oejournal.org/oes
Editorial Board: https://www.oejournal.org/oes/editorialboard/list
OES is available on OE journals (
https://www.oejournal.org/oes/archive)
Submission of OES may be made using ScholarOne (
https://mc03.manuscriptcentral.com/oes)
CN 51-1800/O4
ISSN 2097-0382
Contact Us: oes@ioe.ac.cn
Twitter: @OptoElectronAdv (
https://twitter.com/OptoElectronAdv?lang=en)
WeChat: OE_Journal
# # # # # #
Jiang SB, Deng WJ, Wang ZS et al. Ka-Band metalens antenna empowered by physics-assisted particle swarm optimization (PA-PSO) algorithm.
Opto-Electron Sci 3, 240014 (2024). doi:
10.29026/oes.2024.240014