Baz Abdullah, Wekalao Jacob, Mandela Ngaira, Patel Shobhit K
IEEE Trans Nanobioscience. 2025 Apr;24(2):128-135. doi: 10.1109/TNB.2024.3453372. Epub 2025 Mar 26.
This paper presents a terahertz metasurface based sensor design incorporating graphene and other plasmonic materials for highly sensitive detection of different chemicals. The proposed sensor employs the combination of multiple resonator designs - including circular and square ring resonators - to attain enhanced sensitivity among other performance parameters. Machine learning techniques like Random Forest regression, are employed to enhance the sensor design and predict its performance. The optimized sensor demonstrates excellent sensitivity of 417 GHzRIU and a low detection limit of 0.264 RIU for ethanol and benzene detection. Furthermore, the integration of machine learning cuts down the simulation time and computational requirements by approximately 90% without compromising accuracy. The sensor's unique design and performance characteristics, including its high-quality factor of 14.476, position it as a promising candidate for environmental monitoring and chemical sensing applications. Moreover, it also demonstrates potential for 2-bit encoding applications through strategic modulation of graphene chemical potential values. On the other hand, it also shows prospects of 2-bit encoding applications via the modulation of graphene chemical. This work provides a major advancement to the terahertz sensing application by proposing new materials, structures, and methods in computation in order to develop a high-performance chemical sensor.
本文提出了一种基于太赫兹超表面的传感器设计,该设计结合了石墨烯和其他等离子体材料,用于对不同化学物质进行高灵敏度检测。所提出的传感器采用了多种谐振器设计的组合——包括圆形和方形环形谐振器——以在其他性能参数中实现更高的灵敏度。采用了诸如随机森林回归等机器学习技术来优化传感器设计并预测其性能。优化后的传感器在检测乙醇和苯时表现出417 GHz/RIU的出色灵敏度以及0.264 RIU的低检测限。此外,机器学习的集成在不影响准确性的情况下将模拟时间和计算需求减少了约90%。该传感器独特的设计和性能特性,包括其14.476的高品质因数,使其成为环境监测和化学传感应用的有前途的候选者。此外,它还通过对石墨烯化学势值的策略性调制展示了在2位编码应用中的潜力。另一方面,它还通过石墨烯化学的调制展示了2位编码应用的前景。这项工作通过提出新材料、结构和计算方法,为开发高性能化学传感器的太赫兹传感应用提供了重大进展。