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A Method on Lightweight for the Primary Mirror of Large Space-based Telescope based on Neural Network

机译:基于神经网络的大型天文望远镜主镜轻量化方法

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With the aperture of telescope becoming larger, the mass of primary mirror and other relevant structures will become heavier as well. Therefore, lighting weight for large space-based telescope is necessary. This paper purposed a method based on Neural Network aims to build a math model for primary mirror of large space-based telescope, which can reduce weight of the telescope and smaller mirror deformation caused by gravity release effectively. In the meantime, it can also improve stiffness of structure and reduce thermal strain caused by on orbit temperature variation effectively. The model describes the relationship between the structure of primary mirror of large space-based telescope and corresponding deformation, and describes the optical performance of mirror by using Zernike Polynomial. To optimize the structure of primary mirror lightweight, we take the deformation of mirror and its optical performance into consideration. To apply the structures parameters and its corresponding deformations to Neural Network training, we use the combination samples of different mirror lightweight structure parameters and corresponding deformation which caused by gravity release and thermal condition. Finally, by taking advantage of the Neural Network model to optimize the primary mirror lightweight of 1-meter rectangle space-based telescope, which can make the RMS 0.024λ (λ=632.8nm)and areal density under 15kg/m~2. This method combines existing results and numerical simulation to establish numerical model based on Neural Network method. Research results can be applied to same processes of designing, analyzing, and processing of large space-based telescope directly.
机译:随着望远镜的孔径变大,主镜和其他相关结构的质量也会越来越重。因此,大型天基望远镜的照明重量是必需的。本文提出了一种基于神经网络的方法,旨在建立大型天基望远镜主镜的数学模型,从而可以减轻望远镜的重量,并有效减小重力释放引起的镜面变形。同时,还可以有效提高结构刚度,有效降低轨道温度变化所引起的热应变。该模型描述了大型天基望远镜的主镜结构与相应变形之间的关系,并使用Zernike多项式描述了镜的光学性能。为了优化主镜轻量化的结构,我们考虑了镜的变形及其光学性能。为了将结构参数及其相应的变形应用到神经网络训练中,我们使用了不同镜面轻质结构参数的组合样本以及由重力释放和热条件引起的相应变形。最后,利用神经网络模型优化1米矩形天基望远镜的主镜重量,可以使RMS为0.024λ(λ= 632.8nm),面密度在15kg / m〜2以下。该方法将已有的结果与数值模拟相结合,建立了基于神经网络的数值模型。研究结果可直接应用于大型天基望远镜的设计,分析和处理过程。

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