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Open loop tomography with artificial neural networks on CANARY : on-sky results.

机译:在CANARY上使用人工神经网络进行的开环层析成像:天空上的结果。

摘要

We present recent results from the initial testing of an artificial neural network (ANN)-based tomographic reconstructor Complex Atmospheric Reconstructor based on Machine lEarNing (CARMEN) on CANARY, an adaptive optics demonstrator operated on the 4.2 m William Herschel Telescope, La Palma. The reconstructor was compared with contemporaneous data using the Learn and Apply (L&A) tomographic reconstructor. We find that the fully optimized L&A tomographic reconstructor outperforms CARMEN by approximately 5 per cent in Strehl ratio or 15 nm rms in wavefront error. We also present results for CANARY in Ground Layer Adaptive Optics mode to show that the reconstructors are tomographic. The results are comparable and this small deficit is attributed to limitations in the training data used to build the ANN. Laboratory bench tests show that the ANN can outperform L&A under certain conditions, e.g. if the higher layer of a model two layer atmosphere was to change in altitude by ∼300 m (equivalent to a shift of approximately one tenth of a subaperture).
机译:我们介绍了基于人工神经网络(ANN)的断层图像重建器,基于MachinearyEarNing(CARMEN)的复杂大气重建器在CANARY上进行的初步测试的最新结果,该结构是在拉帕尔玛的4.2μmWilliam Herschel望远镜上运行的自适应光学演示器。使用“学习并应用”(L&A)层析重建器将重建器与同期数据进行比较。我们发现,完全优化的L&A层析成像重建器在Strehl比中的表现优于CARMEN,而在波前误差方面的表现则优于15μnmrms。我们还以地面层自适应光学模式显示CANARY的结果,以表明重建器是断层摄影的。结果是可比的,这个小的缺陷归因于用于构建ANN的训练数据的限制。实验室试验表明,在某些条件下,例如人工神经网络,人工神经网络的性能优于L&A。如果模型两层大气的高层要在高度上变化约300μm(相当于子孔径的十分之一左右)。

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