Pan Yue, Hu Motong, Zhang Kailin, Xu Xiping
Opt Lett. 2023 Nov 15;48(22):5851-5854. doi: 10.1364/OL.505605.
The thermal deformation fitting result of an optical surface is an important factor that affects the reliability of optical-mechanical-thermal integrated analysis. The traditional numerical methods are challenging to balance fitting accuracy and efficiency, especially the insufficient ability to deal with high-order Zernike polynomials. In this Letter, we innovatively proposed an opto-thermal deformation fitting method based on a neural network and a transfer learning to overcome shortcomings of numerical methods. The one-dimensional convolutional neural network (1D-CNN) model, which can represent deformation of the optical surface, is trained with Zernike polynomials as the input and the optical surface sag change as the output, and the corresponding Zernike coefficients are predicted by the identity matrix. Meanwhile, the trained 1D-CNN is further combined with the transfer learning to efficiently fit all thermal deformations of the same optical surface at different temperature conditions and avoids repeated training of the network. We performed thermal analysis on the main mirror of an aerial camera to verify the proposed method. The regression analysis of 1D-CNN training results showed that the determination coefficient is greater than 99.9%. The distributions of Zernike coefficients predicted by 1D-CNN and transfer learning are consistent. We conducted an error analysis on the fitting results, and the average values of the peak-valley, root mean square, and mean relative errors of the proposed method are 51.56%, 60.51, and 45.14% of the least square method, respectively. The results indicate that the proposed method significantly improves the fitting accuracy and efficiency of thermal deformations, making the optical-mechanical-thermal integrated analysis more reliable.
光学表面的热变形拟合结果是影响光机热一体化分析可靠性的重要因素。传统数值方法在平衡拟合精度和效率方面具有挑战性,尤其是处理高阶泽尼克多项式的能力不足。在本文中,我们创新性地提出了一种基于神经网络和迁移学习的光热变形拟合方法,以克服数值方法的缺点。以泽尼克多项式为输入、光学表面矢高变化为输出训练能够表征光学表面变形的一维卷积神经网络(1D-CNN)模型,并通过单位矩阵预测相应的泽尼克系数。同时,将训练好的1D-CNN与迁移学习进一步结合,以高效拟合同一光学表面在不同温度条件下的所有热变形,避免网络的重复训练。我们对航空相机的主镜进行了热分析,以验证所提出的方法。1D-CNN训练结果的回归分析表明,决定系数大于99.9%。1D-CNN和迁移学习预测的泽尼克系数分布一致。我们对拟合结果进行了误差分析,所提方法的峰谷、均方根和平均相对误差的平均值分别为最小二乘法的51.56%、60.51和45.14%。结果表明,所提方法显著提高了热变形的拟合精度和效率,使光机热一体化分析更加可靠。