The self-learning AI controller for adaptive power beaming with fiber-array laser transmitter system

A. Vorontsov, G. A. Filimonov
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Abstract

In this study we consider adaptive power beaming with a fiber-array laser transmitter system in presence of atmospheric turbulence. For optimization of power transition through the atmosphere a fiber-array is traditionally controlled by stochastic parallel gradient descent (SPGD) algorithm where control feedback is provided via a radio frequency link by an optical-to-electrical power conversion sensor, attached to a cooperative target. The SPGD algorithm continuously and randomly perturbs voltages applied to fiber-array phase shifters and fiber tip positioners in order to maximize sensor signal, i.e. uses, the so-called, “blind” optimization principle. By contrast to this approach a prospective artificially intelligent (AI) control systems for synthesis of optimal control can utilize various pupil- or target-plane data available for the analysis including wavefront sensor data, photo-voltaic array (PVA) data, other optical or atmospheric parameters, and potentially can eliminate well-known drawbacks of SPGDbased controllers. In this study an optimal control is synthesized by a deep neural network (DNN) using target-plane PVA sensor data as its input. A DNN training is occurred online in sync with control system operation and is performed by applying of small perturbations to DNN’s outputs. This approach does not require initial DNN’s pre-training as well as guarantees optimization of system performance in time. All theoretical results are verified by numerical experiments.
光纤阵列激光发射系统自适应功率光束的人工智能自学习控制器
本文研究了大气湍流条件下光纤阵列激光发射系统的自适应功率束传输。为了优化通过大气的功率转换,传统上采用随机平行梯度下降(SPGD)算法控制光纤阵列,其中控制反馈通过连接在合作目标上的光电功率转换传感器的射频链路提供。SPGD算法对施加在光纤阵列移相器和光纤端部定位器上的电压进行连续随机扰动,以使传感器信号最大化,即利用所谓的“盲”优化原理。与此方法相比,用于综合最优控制的前瞻性人工智能(AI)控制系统可以利用各种可用于分析的瞳面或目标面数据,包括波前传感器数据、光伏阵列(PVA)数据、其他光学或大气参数,并且可能消除基于spgdd控制器的众所周知的缺点。本研究以目标平面PVA传感器数据为输入,利用深度神经网络(DNN)合成最优控制。DNN训练与控制系统同步在线进行,并通过对DNN输出施加小扰动来执行。该方法不需要初始DNN的预训练,保证了系统性能的及时优化。数值实验验证了所有理论结果。
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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