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An algorithm combining convolutional neural networks with SPGD for SLAO in FSOC

机译:一种算法将卷积神经网络与SPGD在FSOC中的SLAO结合

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摘要

The wavefront distortion in the free space optical communication (FSOC) can be mitigated with sensor-less adaptive optics (SLAO). The SLAO controlling algorithm plays an important role for system performance, but the conventional methods still cannot reach satisfaction. This paper presents a hybrid method to improve the calibration efficiency and accuracy, in which convolutional neural networks (CNN) model coarsely classifies and corrects the aberrations, and then stochastic parallel gradient descent (SPGD) algorithm finely corrects aberrations. Simulations show that it can improve the speed for the distortion compensation and avoid the problem falling into local optimum in traditional SPGD. This hybrid method can improve coupling efficiency of the optical carrier in the SLAO and enable FSOC to achieve a higher Strehl ratio (SR) under atmospheric turbulence.
机译:可以通过更少的自适应光学(SLAO)来减轻自由空间光通信(FSOC)中的波前失真。 SLAO控制算法对系统性能起重要作用,但传统方法仍然无法达到满足。 本文提出了一种改进校准效率和精度的混合方法,其中卷积神经网络(CNN)模型粗略地分类和校正像差,然后随机平行梯度下降(SPGD)算法精细校正像差。 模拟表明它可以提高失真补偿的速度,并避免在传统SPGD中落入局部最佳的问题。 该混合方法可以提高SLAO中光学载体的耦合效率,使FSOC能够在大气湍流下实现更高的斯特勒比(SR)。

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