光子晶体光纤
光纤
芯(光纤)
计算机科学
光学工程
材料科学
光子学
光子晶体
纤维
包塑石英纤维
光电子学
光学
塑料光纤
光纤传感器
复合材料
电信
物理
作者
Juan Soto-Perdomo,Erick Reyes-Vera,Jorge Montoya-Cardona,Juan Arango-Moreno,Nelson D. Gómez-Cardona,Jorge Herrera-Ramírez
出处
期刊:Optical Engineering
[SPIE - International Society for Optical Engineering]
日期:2024-01-18
卷期号:63 (01)
被引量:1
标识
DOI:10.1117/1.oe.63.1.015102
摘要
The traditional numerical analysis in waveguide design can be time-consuming and inefficient. This is even more prominent in the THz region and with complex shapes and materials. As an alternative to overcome these drawbacks, we propose a machine learning (ML) approach to design porous-core photonic crystal fibers (PCFs) for the THz band. This method is based on an artificial neural network (ANN) model trained to predict key parameters such as the effective refractive index, effective area, dispersion, and loss values with accuracy and speed. In that sense, the network was trained to perform multiple-output regression of the above parameters. The training data for this model comes from numerical calculations that use the finite element method (FEM) to simulate and evaluate analytical expressions. Our results demonstrate the ML model's ability to capture the complex and nonlinear relationships between the input and output parameters and accurately predict the behavior of the THz PCF. Moreover, the proposed model has an inference time of ∼0.03584 s for a batch of 32 data sets, which substantially outperforms typical calculation times needed in FEM simulations for THz waveguide design. These results show that this approach is efficient and effective and has the potential to significantly accelerate the design process of PCFs for THz applications.
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