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Deep learning control model for adaptive optics systems

机译:自适应光学系统的深度学习控制模型

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摘要

To correct wavefront aberrations, commonly employing proportional-integral control in adaptive optics (AO) systems, the control process depends strictly on the response matrix of the deformable mirror. The alignment error between the Hartmann-Shack wavefront sensor and the deformable mirror is caused by various factors in AO systems. In the conventional control method, the response matrix can be recalibrated to reduce the impact of alignment error, but the impact cannot be eliminated. This paper proposes a control method based on a deep learning control model (DLCM) to compensate for wavefront aberrations, eliminating the dependence on the deformable mirror response matrix. Based on the wavefront slope data, the cost functions of the model network and the actor network are defined, and the gradient optimization algorithm improves the efficiency of the network training. The model network guarantees the stability and convergence speed, while the actor network improves the control accuracy, realizing an online identification and self-adaptive control of the system. A parameter-sharing mechanism is adopted between the model network and the actor network to control the system gain. Simulation results show that the DLCM has good adaptability and stability. Through self-learning, it improves the convergence accuracy and iterations, as well as the adjustment tolerance of the system. (C) 2019 Optical Society of America
机译:为了纠正波前像差,通常采用自适应光学(AO)系统中的比例积分控制,控制过程严格取决于可变形镜的响应矩阵。 Hartmann-Shack波前传感器和可变形镜之间的对准误差是由AO系统的各种因素引起的。在传统的控制方法中,可以重新校准响应矩阵以减少对准误差的影响,但不能消除影响。本文提出了一种基于深度学习控制模型(DLCM)的控制方法来补偿波前像差,从而消除了可变形镜响应矩阵的依赖性。基于波前倾斜数据,定义了模型网络和演员网络的成本函数,梯度优化算法提高了网络训练的效率。模型网络保证了稳定性和收敛速度,而演员网络提高了控制精度,实现了系统的在线识别和自适应控制。模型网络和演员网络之间采用参数共享机制来控制系统增益。仿真结果表明,DLCM具有良好的适应性和稳定性。通过自学,它提高了收敛准确性和迭代,以及系统的调整公差。 (c)2019年光学学会

著录项

  • 来源
    《Applied optics》 |2019年第8期|共12页
  • 作者单位

    Chinese Acad Sci Key Lab Adapt Opt Chengdu 610209 Sichuan Peoples R China;

    Chinese Acad Sci Key Lab Adapt Opt Chengdu 610209 Sichuan Peoples R China;

    Chinese Acad Sci Key Lab Adapt Opt Chengdu 610209 Sichuan Peoples R China;

    Chinese Acad Sci Key Lab Adapt Opt Chengdu 610209 Sichuan Peoples R China;

    Univ Elect Sci &

    Technol China Sch Optoelect Sci &

    Engn Chengdu 610054 Sichuan Peoples R China;

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