A research team, comprising Professor Junsuk Rho from the Department of Mechanical Engineering, the Department of Chemical Engineering, and the Department of Electrical Engineering, and PhD candidates Seokho Lee and Cherry Park from the Department of Mechanical Engineering at Pohang University of Science and Technology (POSTECH), has recently published a paper that highlights the next generation of research trends that combine metaphotonics research with artificial intelligence. The paper has been published in the international journal, Current Opinion in Solid State and Materials Science.
Credit: POSTECH
A research team, comprising Professor Junsuk Rho from the Department of Mechanical Engineering, the Department of Chemical Engineering, and the Department of Electrical Engineering, and PhD candidates Seokho Lee and Cherry Park from the Department of Mechanical Engineering at Pohang University of Science and Technology (POSTECH), has recently published a paper that highlights the next generation of research trends that combine metaphotonics research with artificial intelligence. The paper has been published in the international journal, Current Opinion in Solid State and Materials Science.
Metalenses have sparked a revolution in optics, drastically slimming down conventional lens thickness to one/10,000th while maintaining control over light properties. Notably, the academic community has begun harnessing AI as a mapping tool to discern relationships between input and output data. In their paper, the research team outlines three key trends emerging from AI-fueled metaphotonics research.
Previous research involving simulations to develop metamaterial-based devices were time-consuming endeavors. However, with the application of AI technology, researchers have achieved rapid predictions of optical properties based on input data, significantly saving time and energy. By inputting data regarding optical properties into AI systems, researchers can now design optical devices with desired properties.
In the realm of optical neural networks, a burgeoning field of optical computer technology is emerging, aiming to enable AI at the speed of light by using metamaterials to convert information into light. The research team, in particular, offers a fresh perspective on the synergy between AI and future metaphotonics research by classifying optical neural networks into encoders, responsible for compressing and abstracting information, and decoders, tasked with interpreting information.
The team also highlighted metasensors based on metamaterials as a next-generation research trend. Metasensors, devices that encode measured data into light and concurrently amplify it, enable remarkably precise and swift data analysis when integrated with AI. These metasensors hold promise across various domains including diagnosis and treatment of patients, environmental monitoring, security, and beyond, facilitating the highly detailed detection and analysis of data.
Professor Junsuk Rho expressed the team’s expectation by stating, “This paper presents the trajectory of metaphotonics research, encompassing past, present, and future endeavors, spanning from recent research to challenges and forthcoming trends.” He added, “We anticipate further creative and innovative research that capitalizes on the intrinsic attributes of AI and metamaterials.”
The research was conducted with support from the STEAM Research Program, the RLRC Program, and the Nano Connect Program of the National Research Foundation of Korea and the Ministry of Science and ICT, the Alchemist Project of the Ministry of Trade, Industry and Energy and the Korea Planning & Evaluation Institute of Industrial Technology, and the N.EX.T Impact Project of POSCO Holdings.
Journal
Current Opinion in Solid State and Materials Science
DOI
10.1016/j.cossms.2024.101144
Article Title
Mapping information and light: Trends of AI-enabled metaphotonics
Article Publication Date
21-Feb-2024