Responding to this need, researchers at Ulsan National Institute of Science and Technology (UNIST), in collaboration with the University of Tennessee and Oak Ridge National Laboratory, optimized a THz nanoresonator specifically for 6G communications using artificial intelligence.
The optimized nanoresonator is versatile, with potential applications for ultra-precise detectors, ultrasmall molecular detection sensors, and bolometer studies, according to researcher Young-Taek Lee.
The team’s analytical, model-based approach significantly reduces the computational resources required to optimize THz nanoresonators and offers a practical alternative to numerical, simulation-based inverse designs for THz nanodevices. To put the advancement into perspective, the process enables efficient design of THz nanoresonators on personal computers, a process which was previously time-consuming and demanding even with supercomputers.
The researchers worked with nanogap loop arrays, a type of resonator that has demonstrated the potential to detect THz electromagnetic waves. Because the unit cells of these arrays are 10× smaller than millimeter wavelengths, with nanogap regions that are 1,000,000× smaller, they require significant computational resources for accurate simulation.
To improve the efficiency of nanogap loop arrays, the researchers combined the nanoresonators with a rapid inverse design method based on physics-informed machine learning. Specifically, the inverse design approach used double deep Q-learning with an analytical model of the THz nanogap loop array.
Professor Hyong-Ryeol Park, who led the research, stressed the need to understand physical phenomena in conjunction with AI technology. “While AI may appear to be the solution to all problems, comprehending physical phenomena remains crucial,” he said.
The team evaluated the efficiency of the new nanoresonator through a series of THz electromagnetic wave transmission experiments conducted in simulation with the help of physics-informed machine learning.
“The methodology employed in this study is not limited to specific nanostructures, but can be extended to various studies using physical theoretical models of different wavelengths or structures,” Lee said.
The research was published in Nano Letters (www.doi.org/10.1021/acs.nanolett.3c03572).