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首页> 外文期刊>Journal of the Optical Society of America, A. Optics, image science, and vision >Distributed Kalman filtering compared to Fourier domain preconditioned conjugate gradient for laser guide star tomography on extremely large telescopes
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Distributed Kalman filtering compared to Fourier domain preconditioned conjugate gradient for laser guide star tomography on extremely large telescopes

机译:与傅立叶域预处理共轭梯度相比的分布式卡尔曼滤波在超大型望远镜上进行激光导星层析成像

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This paper discusses the performance and cost of two computationally efficient Fourier-based tomographic wavefront reconstruction algorithms for wide-field laser guide star (LGS) adaptive optics (AO). The first algorithm is the iterative Fourier domain preconditioned conjugate gradient (FDPCG) algorithm developed by Yang et al. [Appl. Opt. 45, 5281 (2006)], combined with pseudo-open-loop control (POLC). FDPCG's computational cost is proportional to N log(N), where N denotes the dimensionality of the tomography problem. The second algorithm is the distributed Kalman filter (DKF) developed by Massioni et al. [J. Opt. Soc. Am. A 28, 2298 (2011)], which is a noniterative spatially invariant controller. When implemented in the Fourier domain, DKF's cost is also proportional to N log(N). Both algorithms are capable of estimating spatial frequency components of the residual phase beyond the wavefront sensor (WFS) cutoff frequency thanks to regularization, thereby reducing WFS spatial aliasing at the expense of more computations. We present performance and cost analyses for the LGS multiconjugate AO system under design for the Thirty Meter Telescope, as well as DKF's sensitivity to uncertainties in wind profile prior information. We found that, provided the wind profile is known to better than 10% wind speed accuracy and 20 deg wind direction accuracy, DKF, despite its spatial invariance assumptions, delivers a significantly reduced wavefront error compared to the static FDPCG minimum variance estimator combined with POLC. Due to its nonsequential nature and high degree of parallelism, DKF is particularly well suited for real-time implementation on inexpensive off-the-shelf graphics processing units.
机译:本文讨论了两种用于广域激光导星(LGS)自适应光学(AO)的基于计算的高效傅立叶层析X射线波前重建算法的性能和成本。第一种算法是Yang等人开发的迭代傅立叶域预处理共轭梯度(FDPCG)算法。 [应用选择。 45,5281(2006)],结合伪开环控制(POLC)。 FDPCG的计算成本与N log(N)成正比,其中N表示层析成像问题的维数。第二种算法是Massioni等人开发的分布式卡尔曼滤波器(DKF)。 [J.选择。 Soc。上午。 A 28,2298(2011)],这是一种非迭代的空间不变控制器。在傅立叶域中实现时,DKF的成本也与N log(N)成正比。由于正则化,这两种算法都能够估计超出波前传感器(WFS)截止频率的剩余相位的空间频率分量,从而以更多计算为代价减少WFS空间混叠。我们介绍了针对三十米望远镜设计的LGS多共轭AO系统的性能和成本分析,以及DKF对风廓线先验信息不确定性的敏感性。我们发现,假设已知风廓线优于风速精度10%和风向20度,则DKF尽管具有空间不变性假设,但与静态FDPCG最小方差估计器与POLC组合相比,仍可显着降低波前误差。由于DKF具有非顺序性质和高度并行性,因此特别适合在廉价的现成图形处理单元上实时实施。

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