Large-range piston error detection technology based on dispersed fringe sensor

Pengfei Wang, Hui Zhao, Xiaopeng Xie, Yating Zhang, Chuang Li, XueWu Fan
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Abstract

Synthetic aperture is the mainstream structure of current astronomical telescopes. However, after the synthetic aperture telescope is deployed in orbit, there will remain tilt and piston error between adjacent segments, which will sharply deteriorate the imaging quality of the optical system. The traditional piston error detection method based on dispersed fringe sensor has the question that it is difficult to detect the piston error within one wavelength, and the detection accuracy is restricted by the detection range. The method in this paper constructs multiple monochromatic light channels by opening windows in different areas on the dispersed fringe pattern, calculating and obtaining the feature value in each window to form a feature vector. Then, the convolutional neural network is introduced to distinguish the feature vector to detect piston error. Among them, the training set construction method adopted in this paper only needs raw data in one wavelength to construct a training set covering the entire detection range. Through simulation, the method proposed in this paper achieves the detection range of [-208λ, 208λ] (λ=720nm), and regardless of the presence of noise, the root mean square value of the detection error does not exceed 17.7nm (0.027λmin, λmin=660nm).
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基于分散条纹传感器的大量程活塞误差检测技术
合成孔径是当前天文望远镜的主流结构。然而,合成孔径望远镜在轨部署后,相邻段之间会存在倾斜和活塞误差,这将严重影响光学系统的成像质量。传统的基于分散条纹传感器的活塞误差检测方法存在难以在一个波长内检测活塞误差,且检测精度受检测范围限制的问题。本文方法通过在分散条纹图上不同区域打开窗口,计算并获取每个窗口的特征值,形成特征向量,构建多个单色光通道。然后,引入卷积神经网络识别特征向量,检测活塞误差;其中,本文采用的训练集构建方法只需要一个波长的原始数据就可以构建覆盖整个检测范围的训练集。通过仿真,本文提出的方法实现了[-208λ, 208λ] (λ=720nm)的检测范围,且在不考虑噪声存在的情况下,检测误差的均方根值不超过17.7nm (0.027λmin, λmin=660nm)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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