Design of binary blazed grating couplers based on cascaded residual neural networks

IF 3.7 2区 工程技术 Q2 OPTICS
Qingqing Feng, Zhe Ji, Shiru Fu, Haoran Yu
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Abstract

Focusing on improving the inverse design method of binary blazed grating couplers to achieve high design efficiency and low error, this work investigates three approaches: a cascaded neural network, an improved cascaded residual network, and particle swarm optimization (PSO). Firstly, a comprehensive training dataset was obtained through electromagnetic simulations, and model hyperparameters were determined. The ordinary cascaded neural network required a training time of 33,944 s, achieving a relative error of 0.12. To enhance both design efficiency and accuracy, an improved cascaded residual neural network model was developed. By introducing residual connections, it effectively mitigated issues of gradient vanishing and gradient explosion. With this improvement, the training time was significantly reduced to 3737 s, and the relative error was lowered to 0.08. Additionally, PSO was applied to optimize the grating coupler. Using a population size of 50 and performing 100 iterations, the optimization process required approximately 45,000 s, a maximum coupling efficiency of 47.37%. A comprehensive comparison of these methods demonstrates that the improved cascaded residual network exhibits significant advantages in both training time and relative error. This highlights its great potential for significantly improving the inverse design efficiency and accuracy of binary blazed grating couplers.
基于级联残差神经网络的二元燃烧光栅耦合器设计
为了提高二元燃烧光栅耦合器的设计效率和误差,本文研究了三种方法:级联神经网络、改进级联残差网络和粒子群优化(PSO)。首先,通过电磁仿真获得完整的训练数据集,确定模型超参数;普通级联神经网络的训练时间为33944 s,相对误差为0.12。为了提高设计效率和精度,提出了一种改进的级联残差神经网络模型。通过引入残余连接,有效地缓解了梯度消失和梯度爆炸问题。改进后的训练时间明显减少到3737 s,相对误差降低到0.08。此外,采用粒子群算法对光栅耦合器进行了优化。当种群规模为50,迭代100次时,优化过程大约需要45000秒,最大耦合效率为47.37%。对这些方法的综合比较表明,改进的级联残差网络在训练时间和相对误差方面都具有显著的优势。这突出了它在显著提高二元燃烧光栅耦合器的逆设计效率和精度方面的巨大潜力。
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来源期刊
Optics and Lasers in Engineering
Optics and Lasers in Engineering 工程技术-光学
CiteScore
8.90
自引率
8.70%
发文量
384
审稿时长
42 days
期刊介绍: Optics and Lasers in Engineering aims at providing an international forum for the interchange of information on the development of optical techniques and laser technology in engineering. Emphasis is placed on contributions targeted at the practical use of methods and devices, the development and enhancement of solutions and new theoretical concepts for experimental methods. Optics and Lasers in Engineering reflects the main areas in which optical methods are being used and developed for an engineering environment. Manuscripts should offer clear evidence of novelty and significance. Papers focusing on parameter optimization or computational issues are not suitable. Similarly, papers focussed on an application rather than the optical method fall outside the journal''s scope. The scope of the journal is defined to include the following: -Optical Metrology- Optical Methods for 3D visualization and virtual engineering- Optical Techniques for Microsystems- Imaging, Microscopy and Adaptive Optics- Computational Imaging- Laser methods in manufacturing- Integrated optical and photonic sensors- Optics and Photonics in Life Science- Hyperspectral and spectroscopic methods- Infrared and Terahertz techniques
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