材料科学
飞秒
透射率
进程窗口
激光器
光学
制作
光电子学
图像处理
多层感知器
过程(计算)
纳米结构
像素
氟化镁
微观结构
播种
工艺优化
航程(航空)
人工神经网络
作者
Yulong Ding,Cong Wang,Xianshi Jia,Linpeng Liu,Zheng Gao,Xiang Jiang,Shiyu Wang,Dejin Yan,Nai Lin,Zhou Li,Ji-An Duan
标识
DOI:10.1021/acsami.5c17441
摘要
Femtosecond laser processing of large-area micro- and nanostructures exhibits significant potential for applications in materials science, optical engineering, and biomedicine. However, existing methods for fabricating high-performance micro- and nanostructures heavily rely on empirical trial-and-error approaches, leading to cumbersome processes, high resource consumption, and low efficiency. To achieve the efficient manufacturing of anti-reflective microstructures with nearly perfect performance, we propose a strategy that utilizes machine learning (ML) to assist femtosecond lasers in real-time prediction and process optimization. A multilayer perceptron model was trained on simulation data derived from the finite-difference time-domain method, establishing a nonlinear mapping between microstructural morphology parameters and transmittance. By deploying the trained model in the fabrication system, transmittance spectra can be predicted within 0.004 s upon input of structural parameters, significantly enhancing process optimization efficiency. Ultimately, using ML-optimized processing parameters combined with a burst pulse and bow-tie scanning technique, large-area anti-reflective microhole arrays (12 × 12 mm2) with a periodicity of 2 μm were fabricated on the surface of magnesium fluoride (MgF2) windows at a rate of 10,000 holes per second. The anti-reflective MgF2 window achieved an average transmittance of 99.03% in the 3 to 5 μm range, maintaining stable transmittance across a broad angle range (0-50°) and demonstrating excellent infrared image capturing capabilities. This study facilitates the practical deployment of anti-reflective windows in extreme-environment imaging applications.
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