光子晶体光纤
多物理
色散(光学)
包层(金属加工)
材料科学
人工神经网络
光纤
计算机科学
光学
波长
光电子学
人工智能
物理
有限元法
冶金
热力学
作者
Md. Ibrahim Khalil,Md. Saiful Islam
标识
DOI:10.1109/icece57408.2022.10088715
摘要
Photonic Crystal Fibers (PCFs) are used in spectroscopy, imaging, and metrology as well as in long-haul optical communication systems for their dispersion compensating characteristics. In this work, a novel and highly negative dispersion compensating photonic crystal fiber is structured, and then the study of machine learning approaches has been proposed to predict the output properties like effective refractive index, dispersion, confinement loss, effective area, and V-parameter from input parameters in the range of wavelength from 1.18–1.75$\mu$m, pitch from 0.75–0.9$\mu$m, the diameter of the core, and air holes in the cladding region. The proposed models take fewer computing resources and less time than COMSOL Multiphysics simulation and Artificial Neural Network. The machine learning models take milliseconds to train and less than one millisecond to test. The proposed PCF with negative dispersion characteristics has the potential for applicability in real high-rate optical communication. In hence, machine learning approaches are considered as an alternative to conventional numerical simulation to predict optical properties.
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