Department of Electrical and Computer Engineering, Missouri University of Science and Technology, Rolla, MO 65409-0040, USA.
Sensors (Basel). 2023 May 9;23(10):4574. doi: 10.3390/s23104574.
Wavemeters are very important for precise and accurate measurements of both pulses and continuous-wave optical sources. Conventional wavemeters employ gratings, prisms, and other wavelength-sensitive devices in their design. Here, we report a simple and low-cost wavemeter based on a section of multimode fiber (MMF). The concept is to correlate the multimodal interference pattern (i.e., speckle patterns or specklegrams) at the end face of an MMF with the wavelength of the input light source. Through a series of experiments, specklegrams from the end face of an MMF as captured by a CCD camera (acting as a low-cost interrogation unit) were analyzed using a convolutional neural network (CNN) model. The developed machine learning specklegram wavemeter (MaSWave) can accurately map specklegrams of wavelengths up to 1 pm resolution when employing a 0.1 m long MMF. Moreover, the CNN was trained with several categories of image datasets (from 10 nm to 1 pm wavelength shifts). In addition, analysis for different step-index and graded-index MMF types was carried out. The work shows how further robustness to the effects of environmental changes (mainly vibrations and temperature changes) can be achieved at the expense of decreased wavelength shift resolution, by employing a shorter length MMF section (e.g., 0.02 m long MMF). In summary, this work demonstrates how a machine learning model can be used for the analysis of specklegrams in the design of a wavemeter.
波导仪对于精确测量脉冲和连续波光源非常重要。传统的波导仪在设计中采用光栅、棱镜和其他波长敏感器件。在这里,我们报告了一种基于一段多模光纤(MMF)的简单且低成本的波导仪。其基本原理是将 MMF 端面的多模干涉图案(即散斑图案或散斑图)与输入光源的波长相关联。通过一系列实验,使用 CCD 相机(作为低成本的询问单元)捕获 MMF 端面的散斑图,并使用卷积神经网络(CNN)模型对其进行分析。所开发的机器学习散斑图波导仪(MaSWave)可以在使用 0.1 m 长 MMF 时,以高达 1 pm 分辨率准确地映射散斑图。此外,CNN 是使用从 10nm 到 1 pm 波长移位的几类图像数据集进行训练的。此外,还对不同的阶跃指数和梯度指数 MMF 类型进行了分析。该工作表明,通过使用较短的 MMF 段(例如,0.02 m 长的 MMF),可以在牺牲波长移位分辨率的情况下,进一步提高对环境变化(主要是振动和温度变化)的影响的稳健性。总之,这项工作展示了如何在波导仪的设计中使用机器学习模型来分析散斑图。